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Picture perfect peaks: comprehension of inferential techniques in visual narratives

Published online by Cambridge University Press:  23 August 2022

Bien Klomberg*
Affiliation:
Department of Communication and Cognition, Tilburg School of Humanities and Digital Sciences, Tilburg University, Tilburg, The Netherlands
Neil Cohn
Affiliation:
Department of Communication and Cognition, Tilburg School of Humanities and Digital Sciences, Tilburg University, Tilburg, The Netherlands
*
*Corresponding author. Email: s.a.m.klomberg@tilburguniversity.edu
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Abstract

The ability to reconstruct a missing event to create a coherent interpretation – bridging inference – is central to understanding both real-world events and visual narratives like comics. Most previous work on visual narrative inferencing has focused on fully omitted events, yet few have compared inference generation when climactic events become replaced with a panel employing numerous inferential techniques (e.g., action stars or onomatopoeia). These techniques implicitly express the unseen event while balancing several underlying features that describe their informativeness. Here, we examine whether processing and inference resolution differ across inferential techniques in two self-paced reading experiments. Experiment 1 directly compared five distinct types, and Experiment 2 explored the effect of combining techniques. In both experiments, differences in processing arise both between inferential techniques themselves, and at subsequent panels allowing the bridging inference to be resolved. Analysis of inferential features suggested that the explicitness of the inferential technique led to greater demand in processing, which later facilitated inference generation and comprehensibility. The findings reinforce the necessity of discussing the diversity of narrative patterns motivating bridging inferences within visual narratives.

Type
Article
Creative Commons
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This is an Open Access article, distributed under the terms of the Creative Commons Attribution-NonCommercial-NoDerivatives licence (https://creativecommons.org/licenses/by-nc-nd/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is unaltered and is properly cited. The written permission of Cambridge University Press must be obtained for commercial re-use or in order to create a derivative work.
Copyright
© The Author(s), 2022. Published by Cambridge University Press

1. Introduction

Comprehending events is not always as straightforward as it may initially seem. Events consist of a string of actions, and observers may not witness each component part. Yet it is still possible to understand the full event, as one can often ‘fill in’ the missing information to make sense of it (Kosie & Baldwin, Reference Kosie and Baldwin2019). This retroactive construction of an unseen event is called a bridging inference (Hutson et al., Reference Hutson, Magliano and Loschky2018; Magliano et al., Reference Magliano, Kopp, Higgs and Rapp2017; St. George et al., Reference St. George, Mannes and Hoffman1997). Studies of real-life events show that observers employ bridging inferences quickly and that seeing only the buildup and the aftermath of an event is already sufficient to infer the main action (Strickland & Keil, Reference Strickland and Keil2011).

Such ‘gap filling’ is essential for understanding real-life events, but also for comprehending visual narratives like comics and picture stories (Cohn, Reference Cohn2019; Hutson et al., Reference Hutson, Magliano and Loschky2018; Magliano et al., Reference Magliano, Larson, Higgs and Loschky2016, Reference Magliano, Kopp, Higgs and Rapp2017). Not only can visual narratives omit events to create bridging inferences (Hutson et al., Reference Hutson, Magliano and Loschky2018; Magliano et al., Reference Magliano, Larson, Higgs and Loschky2016, Reference Magliano, Kopp, Higgs and Rapp2017), but the actual event may also be replaced by a panel that omits or implies the unseen action with a conventionalized inference-demanding technique (Cohn & Kutas, Reference Cohn and Kutas2015; Cohn & Wittenberg, Reference Cohn and Wittenberg2015). Consider Fig. 1a, which illustrates a simple sequential narrative, and Fig. 1b, which shows a common inferential technique to substitute for the main action. In Fig. 1b, an ‘action star’ replaces the main event with a star-like symbol that indicates that something impactful happens, but does not provide cues for specific events. Even though there is still a panel in this position that cues that some event happens, readers need to generate a bridging inference to understand the full sequence.

Fig. 1. Visual narrative sequences with (a) an explicit event, (b) an action star, (c) an onomatopoeia, (d) an echoic onlooker, (e) metonymic selective framing, and (f) a metaphor. Images are slightly adapted from Peanuts comics; Peanuts is © Peanuts Worldwide LLC.

Bridging inferences have received considerable focus in theories of comics (Cohn, Reference Cohn2019; Gavaler & Beavers, Reference Gavaler and Beavers2018; McCloud, Reference McCloud1993), where, unlike real life, an author can craft the presentation of an event omitted from a sequence. Several patterns can do this, each of which functions similarly in the narrative structure of a comic. Visual narrative grammar argues that panels play particular categorical roles, which may group together as a coherent constituents of a sequence (see Cohn, Reference Cohn2013b, Reference Cohn2020b). Consider the strips in Fig. 1. The Establisher (Panel 1) introduces the setting and the characters, before the Initial (Panel 2) sets up the climax of the scene, which occurs in the Peak (Panel 3). The aftermath or resolution of the event appears in the Release (Panel 4). This canonical order is stored in memory as a narrative schema (Cohn, Reference Cohn2014a, Reference Cohn2014b, Reference Cohn2020b). Studies have shown that readers recognize and dislike when a Peak has been omitted (Cohn, Reference Cohn2014b), highlighting their importance. Significant inferencing typically occurs when the contents of a Peak are missing, as this panel contains the primary events of the sequence contextually set up by the Initial panel and resolved by the Release panel (Cohn, Reference Cohn2019). What is interesting then about Fig. 1b is that the action star omits the primary events, yet it still fulfills the role of a Peak in the sequence. Thus, although an inference is required, the narrative structure remains intact.

Action stars are only one of many conventionalized inferential techniques that can replace Peaks and thus sponsor bridging inferences (Cohn, Reference Cohn2019). Along with action stars, this study focuses on four of these techniques, depicted in Fig. 1b–f. The Peak of Fig. 1c depicts an onomatopoeia, which is a sound effect evoked by the actual event, here a collision. In Fig. 1d, an ‘echoic onlooker’ depicts another character (or characters) viewing the event and re-enacting (part of) that event. Here, the onlookers, who watch the off-panel event, reproduce the vibrations that the protagonist experiences when slamming into the tree, despite not being a part of the event themselves. Fig. 1e portrays only a kite, a story element related to the Peak (since the kite falls down) and part of the scene (since the protagonist was holding it) but not showing the main action. This is an example of metonymic selective framing – something that conveys meaning (here, the event) by showing a related thing (here, the kite). Lastly, Fig. 1f illustrates a metaphor, which reflects the event with an abstract depiction of a comparable event. Here, a hammer beating an anvil is metaphoric for a collision, a (hard) hit between two elements, with the added similarity that both the anvil and the tree are, in general, immovable objects.

Although these inferential techniques all function structurally as Peaks in the narrative structure, they vary in how they imply undepicted content. Cohn (Reference Cohn2019) posited that various features can describe the informativeness of each technique, as in Table 1. These features could be just descriptive theoretical constructs, or they may function psychologically in a ‘preference rule’ system described in approaches to the cognition of music or in theories of Gestalt psychology (Jackendoff & Lerdahl, Reference Jackendoff and Lerdahl2006; Lerdahl et al., Reference Lerdahl, Jackendoff and Slawson1985). Preference rules are a characterization of principles involved in a dynamic system where features may exert various levels of strength in a context, thereby competing with each other to lead to an interpretation of a stimuli.

Table 1. Overview of the distribution of features across inferential techniques

Note. This table demonstrates the presence of features across inferential techniques, with X indicating that the technique includes that feature.

The features of inference techniques involve characteristics that cut across these structural patterns. The feature [blend] in Table 1 refers to establishing relations between mental spaces (Fauconnier & Turner, Reference Fauconnier and Turner2002; Lakoff & Johnson, Reference Lakoff and Johnson1980) such as mapping across conceptual domains (metaphors) or within domains (metonymies). [Framing] refers to windowing part of the actual scene, as with metonymic selective framing and onlookers, which show parts of the scene other than the main events. [Explicit] techniques depict or describe aspects of the actual event. For example, echoic onlookers, onomatopoeias, and metonymic panels all directly relate via mimicking movement, evoking sound, or showing a part of the implied event. [Text] indicates the presence of text. [Substitutive] techniques show something other than the event, so a replacement of the original scene. All selected inferential technique are events and therefore have high [arousal], as opposed to states, which would have low [arousal]. Lastly, [affix] indicates if morphological affixes are used, which are entities that typically connect to other elements, such as the action star which canonically connects to the ‘stem’ that generates that ‘flash’ (i.e., connects to the source of the impact; Cohn, Reference Cohn2013a).

When a reader progresses through a (visual) discourse, they incorporate the information into a situation model: a mental representation of the ongoing narrative, including the events, actions, and agents involved (Dijk & Kintsch, Reference Dijk and Kintsch1983; Zwaan & Radvansky, Reference Zwaan and Radvansky1998). This type of mental model construction has been studied extensively in research on verbal discourse (Graesser et al., Reference Graesser, Singer and Trabasso1994; Kuperberg et al., Reference Kuperberg, Paczynski and Ditman2010; Yang et al., Reference Yang, Perfetti and Schmalhofer2007) and in the comprehension of real-life events (Papenmeier et al., Reference Papenmeier, Brockhoff and Huff2019; Zacks et al., Reference Zacks, Speer, Swallow, Braver and Reynolds2007). Situation models update with changes to the described or depicted events. Bridging inferences reflect such an update to the situation model when meaning is missing and needs to be filled in.

Construction of a situation model involves several operations. The scene perception and event comprehension theory (SPECT) by Loschky et al. (Reference Loschky, Larson, Smith and Magliano2020)) describes that visual narrative understanding involves front-end processing where readers extract information based on the content of the panel, such as the entities and events involved. These link to back-end processes where extracted information activates representations encoded in semantic memory, which feed into the construction of an event model. The parallel-interfacing narrative semantics (PINS) model by Cohn (Reference Cohn2020b) adds that incoming information from each image prompts predictions about upcoming information. For example, a reader may assume that a character from the first panel will persist in the following panels as well. Sequences that adhere to expectations facilitate processing (Coderre et al., Reference Coderre, O’Donnell, O’Rourke and Cohn2020; Cohn, Reference Cohn2020b). Both SPECT and PINS establish that each consecutive panel is integrated in the existing situation model via updating processes. The more incongruent the incoming stimuli is, the greater the update that is required (Huff et al., Reference Huff, Meitz and Papenmeier2014; Magliano & Zacks, Reference Magliano and Zacks2011).

Bridging inferences invite such updating processes through the need to construct a coherent event understanding in the situation model (Graesser et al., Reference Graesser, Singer and Trabasso1994). Such updating is prompted not only by dropping out panels with crucial event information, like a Peak (Hutson et al., Reference Hutson, Magliano and Loschky2018; Magliano et al., Reference Magliano, Larson, Higgs and Loschky2016, Reference Magliano, Kopp, Higgs and Rapp2017), but also when encountering a Peak panel without explicit information (as in Fig. 1b–f). Indeed, readers slow down when reading panels following action stars or blank panels which replace climactic events (Cohn & Wittenberg, Reference Cohn and Wittenberg2015). Overall, longer self-paced reading times have been taken as evidence for inference generation mechanisms in both visual and verbal narratives, and some work has implicated overlapping working memory processes operating across both modalities (Magliano et al., Reference Magliano, Larson, Higgs and Loschky2016).

The SPECT model keeps to semantic processing, but the PINS model includes narrative structure as an equally important component of comprehending visual sequences. The visual cues of a panel and its position in the narrative help to establish its narrative category. For example, preparatory actions likely correspond to an Initial panel, which entails expectations for the upcoming stimuli to follow the canonical order as a Peak. When the subsequent panel is then observed, backward revision processes will confirm or revise the interpretation of the current structure. Thus, even though the inferential techniques in Fig. 1b–f should sponsor inferencing, they should all maintain the narrative structure as Peaks.

Nevertheless, it remains unknown whether these inferential techniques differ in how they encourage readers to infer unseen information. While the processing of some inferential techniques has been explored, little research has compared their comprehension. Therefore, this study examines to what extent processing differs across conventionalized inferential techniques. One possibility is that, while differences may persist between techniques, they may be motivated by the features (as in Table 1) used to describe their abstract similarities and differences (Cohn, Reference Cohn2019). When such features were theorized, it was unclear whether they served a purely descriptive, theoretical function or whether they could characterize psychological constructs involved in processing. Thus, this study also explores how processing may vary on the basis of underlying features that cut across inferential techniques.

To examine these issues, two experiments measured participants’ self-paced reading of comic strips. Experiment 1 first compares the five outlined inferential techniques (Fig. 1), whereas Experiment 2 then examines the effect of combining inferential techniques.

2. Experiment 1: comparing inferential techniques

While various studies have investigated the processing of visual narratives when events are fully missing (Hutson et al., Reference Hutson, Magliano and Loschky2018; Magliano et al., Reference Magliano, Larson, Higgs and Loschky2016, Reference Magliano, Kopp, Higgs and Rapp2017), comparison of inferential techniques remains limited. Cohn and Wittenberg (Reference Cohn and Wittenberg2015) compared the self-paced reading of sequences with explicit events with those with action stars, blank panels, and anomalous Peaks. Even though blank panels contained no visual information at all, action star panels were viewed faster than blank panels. This shorter viewing time was taken as evidence that action stars played narrative roles as Peaks, unlike blank panels. However, panels after action stars or blank panels both evoked equally longer viewing times, suggesting that the lack of explicit cues in both action stars and blank panels necessitates updating of the situation model. Recent work has further observed little difference in the brain responses between panels following action stars and ‘noise’ panels with scrambled lines (Cohn, Reference Cohn2021).

Such semantic cues may potentially mediate comprehension through the explicitness of inferential techniques. Cohn and Kutas (Reference Cohn and Kutas2015) compared onlookers with varying amounts of cues about the off-panel event they were watching. Neural responses indicative of updating processes were larger for onlookers with more cues about the event, such as matching facial expressions and an exclamation mark above their head, than those without those cues. Explicit depictions of events had even greater responses. Thus, the more information that was depicted in the critical panel, the more updating that was required. At the subsequent panel, onlooker panels evoked brain responses different from explicit depictions in a way that suggested the possibility of working memory processes involved in inference.

Some work has also examined substitutions of text for events. Huff et al. (Reference Huff, Rosenfelder, Oberbeck, Merkt, Papenmeier and Meitz2020) compared textual descriptions of events to visually explicit or omitted events within a visual narrative sequence. The text required longer viewing times than the visuals, suggesting that switching modalities may require more effort than unimodal sequences. In addition, when sound effects are shown instead of an event, processing is impacted by the type of word and its congruity. Descriptive words (e.g., ‘punch’) substituted for Peaks evoke brain responses suggestive of being more unexpected than onomatopoeic words (e.g., ‘pow’) and words of either type that were incongruent to the sequence context (e.g., ‘kiss’ or ‘smooch’ substituting a punch) were more costly to semantic processing (Manfredi et al., Reference Manfredi, Cohn and Kutas2017).

No studies have yet looked at the processing of metaphors or metonymic selective framing techniques in visual narrative sequences. Visual metaphors broadly have only recently begun receiving empirical attention, and many studies focus on a comparison to verbal metaphors (Ojha et al., Reference Ojha, Ervas, Gola and Indurkhya2019), rather than to other visual techniques. Still, metaphoric images from advertisements require more processing costs than literal advertisement images (Ortiz et al., Reference Ortiz, Grima Murcia and Fernandez2017). Studies of language further suggest that both metaphor and metonymies could lead to reading costs. For metaphors, familiarity is often considered decisive. Giora (Reference Giora2003) posits that salient (the most consolidated) interpretations of words are always activated most strongly, whether this is the literal or metaphoric interpretation. Another factor is context; metaphors in context can be understood as quickly as literal phrases when of good quality (Glucksberg, Reference Glucksberg2003; Glucksberg & McGlone, Reference Glucksberg and McGlone2001). Quality, or how well the metaphor expresses the target, is especially important for novel metaphors (Brisard et al., Reference Brisard, Frisson and Sandra2001). Moreover, de Vries et al. (Reference de Vries, Reijnierse and Willems2018) observed that metaphors with clear metaphoric markers (e.g., ‘as if’) were read slower than metaphors without markers and than non-metaphorical expressions.

Similar factors seem involved in processing metonymic devices, as both familiarity and context facilitate interpretation (Frisson & Pickering, Reference Frisson and Pickering1999, Reference Frisson and Pickering2007). Despite these similarities, metonymies appear less complex than metaphors, and are comprehended easier (Rundblad & Annaz, Reference Rundblad and Annaz2010). This difference prompts the prediction that for visual narratives too, metonymic panels may remain easier to interpret than metaphoric ones. Furthermore, unlike metaphors, metonymic selective framing also varies in terms of framing, since they highlight specific elements of the scene. Similarly, Foulsham and Cohn (Reference Foulsham and Cohn2020) created panels that zoomed in only on the parts of an image that had been fixated on by a previous group of observers. Such fixation zoom panels were easier to understand if they included informative cues of a scene rather than uninformative cues. These findings together suggest that metonymic selective framing panels may be comprehended faster than metaphor panels.

Altogether, only a few inferential techniques have been explored in the processing of visual narratives, and rarely compared. Here, we thus ask to what extent the processing of inferential techniques differ from each other by comparing action stars, onomatopoeia, echoic onlookers, metaphoric selective framing, and metaphoric panels (Fig. 1). We predict that both front-end and back-end factors will influence participants’ self-paced reading of these inferential techniques.

First, related to front-end processing, we predict that panels with fewer visual features will be viewed faster than more complex representations. SPECT predicts that information extraction processes are based on eye fixations, meaning that less visual content to be extracted should result in fewer fixations and thus faster viewing times. Thus, action stars and onomatopoeias will be viewed faster than other conventionalized inferential techniques (see Cohn & Wittenberg, Reference Cohn and Wittenberg2015). In addition, subsequent back-end processing would predict that explicitness should factor into processing (Cohn, Reference Cohn2019; Cohn & Kutas, Reference Cohn and Kutas2015), because more explicit cues for events should better assist constructing a situation model. Thus, the more explicit echoic onlookers and metonymic selective framing panels may be viewed slower than inexplicit metaphors.

Nevertheless, inferential processing should be evident at the panel after the Peak, where viewing times should be longer for the panel following an inferential peak than the one following an explicitly depicted event (Cohn & Wittenberg, Reference Cohn and Wittenberg2015; Magliano et al., Reference Magliano, Larson, Higgs and Loschky2016, Reference Magliano, Kopp, Higgs and Rapp2017). Given that prior work has found similar viewing times across inferential techniques (Cohn & Wittenberg, Reference Cohn and Wittenberg2015), one possibility is that all the panels following inferential peaks may sponsor similar viewing times. This would imply that the bridging inference needed to reconcile missing information would not differ, no matter how that information is implied in different techniques. Another possibility might follow that if explicitness provides greater access to event representations at the inferential Peak itself, processing at the subsequent image should become easier for techniques that are more explicit than those that are less explicit.

Finally, by directly comparing inferential techniques, we sought to examine whether their proposed underlying features indeed function as psychological constructs. We predicted that techniques with an [explicit] feature would lead to slower viewing times at the critical panel, based on the cost of accessing event structures by explicit cues, but which would then speed up viewing times for the subsequent panel (Cohn, Reference Cohn2019; Cohn & Kutas, Reference Cohn and Kutas2015; Cohn & Paczynski, Reference Cohn and Paczynski2013). Due to the costs for switching modalities (Huff et al., Reference Huff, Rosenfelder, Oberbeck, Merkt, Papenmeier and Meitz2020), [text] features may slow down readers at both the critical and subsequent panels. Then, based on SPECT, [framing] may imply a reduction of visual features, which could lead to reduced fixations in front-end processing, ultimately leading to faster viewing times at the critical panel. Lastly, metaphor and metonymic panels share a [blend] feature, which would be predicted to slow down readers both at the critical and subsequent panels, reflecting the costs of mappings between mental spaces hinted at in studies of language.

3. Methods

3.1. Stimuli

We selected 30 four-panel Peanuts sequences with no words from an existing stimulus set (Cohn, Reference Cohn2019; Cohn & Kutas, Reference Cohn and Kutas2015). For each strip, based on the events of the original Peak panel, five additional panels were designed for each of the inferential techniques (action star, onomatopoeia, echoic onlooker, metonymic selective framing, and metaphor). These panels were created by editing the original panels, using other panels in the database, or drawing new panels that matched the style of Peanuts. The total number of stimuli was thus 180 strips (30 strips × 6 sequence types, as shown in Fig. 1). These sequences were counterbalanced into six lists using a Latin Square Design, such that each participant viewed 30 strips in total and each strip appeared only once with five examples of each sequence type, but all strips in all sequence types were viewed across participants.

For all 30 strips, a cloze probability score (see Coderre et al., Reference Coderre, O’Donnell, O’Rourke and Cohn2020) and inference assessment score (see Cohn, Reference Cohn2021) were measured in rating studies. For all participants, we measured their Visual Language Fluency Index (VLFI), a metric developed to assess comic reading expertise (Cohn, Reference Cohn2020a), with scores above 20 indicating a high comic fluency (i.e., the reader is well versed in reading comics), scores below 7 a low comic fluency, and an ideal average of around 12. For cloze probability, 47 participants (27 female; mean age: 21.8, range: 18–32; mean VLFI: 8, range: 1.5–17.6) viewed 30 comics with only the first two panels, and they were asked to describe what happened next. The average cloze probability score was 0.38 (range: 0–0.87), meaning that on average 38% of participants predicted the correct event. A consensus score was also included, which measured how often participants agreed with another, regardless of their accuracy to the actual subsequent events. On average, the cloze consensus score was 0.48 (range: 0.17–0.87). For the inference assessment score, 49 participants (39 female; mean age: 21.3, range: 18–35; mean VLFI: 11.3, range: 1.5–38.5) viewed the same 30 strips, with the Peak omitted (always the third panel). They were then asked to describe what happened in the missing panel. The inference assessment score ranged from 0.04 to 0.98, averaging 0.60. Here too, a consensus score was included, with a range between 0.29 and 0.98, averaging 0.67.

The inference assessment showed that three strips were too hard to infer, which were therefore removed from analyses. The cloze probability scores then ranged from 0.02 to 0.87, with an average of 0.41 (consensus range: 0.23–0.87, mean: 0.50). The inference assessment scores then ranged from 0.35 to 0.98, averaging 0.68 (identical for the consensus scores). So, even though the majority of the strips had low cloze, with the subsequent Release, most events remained inferable.

3.2. Participants

A total of 117 participants were recruited via social media and the participant pool available through Tilburg University, the Netherlands. The mean age was 29.33 years (SD = 12.05, range: 17–64, 51 male, 61 female, 5 other). Although statistical power was not calculated a priori, a post hoc power analysis in G*Power indicated that with 12 conditions across 117 participants, to achieve a medium effect size of 0.25, it required F-values of above 1.80 for our within-subjects design. Likewise, with six conditions, we required F-values of above 2.23. These values were met, suggesting that our sample size yielded sufficient power. All participants gave their informed written consent according to protocols approved by the Tilburg University School of Humanities and Digital Sciences Research Ethics and Data Management Committee. All participants completed the VLFI (Cohn, Reference Cohn2020a). The mean VLFI score for this sample was average, at 13.83 (SD = 9.49, range: 1.5–42.5).

3.3. Procedure

Participants accessed the experiment via an online link. First, they viewed an introductory text with instructions and answered the VLFI questions. During the following experimental part, the stimuli were presented in a self-paced viewing set-up via Qualtrics, using the lab.js JavaScript plugin (Henninger et al., Reference Henninger, Shevchenko, Mertens, Kieslich and Hilbig2022). Before each sequence, a screen indicated which trial the participants were at, for example, trial 1 out of 30. Each trial consisted of a four-panel sequence which appeared one panel at a time at the participants’ own pace by pressing the spacebar. After each sequence, participants rated its coherence by pressing the keyboard (1 = hard to understand to 7 = easy to understand). After all 30 sequences, participants were debriefed and thanked for their contribution. On that final page, they could also report if they had noticed anything unusual or had any additional comments.

3.4. Data analysis

Viewing times below 300 ms and above 8,000 ms were first excluded for being either too fast or too slow following Cohn and Wittenberg’s (Reference Cohn and Wittenberg2015) approach, which based these cut-off values on previous self-paced reading results with the mean fastest and slowest viewing times well between these limits (Cohn, Reference Cohn2014b; Cohn & Paczynski, Reference Cohn and Paczynski2013). Outliers were calculated as 2.5 times the standard deviation above the mean, resulting in two participants’ responses being excluded, for a final sample of 117 participants’ responses. Viewing times and comprehensibility ratings were averaged across items for each participant.

First, we analyzed viewing times in a 2 (Position: critical panel and critical panel +1) × 6 (Sequence Type: original event panel, action star, onomatopoeia, echoic onlooker, metonymic selective framing, and metaphor) factorial analysis of variance (ANOVA), to explore whether the position and the type of Peak panel affect viewing times.

For more in-depth analysis, we examined viewing times at the critical Peak panel and at the subsequent panel (critical panel +1) separately, and the comprehensibility ratings for the whole sequence. The data were analyzed using repeated-measures ANOVAs, with Peak type as independent variable (six levels: original event panel, action star, onomatopoeia, echoic onlooker, metonymic selective framing, and metaphor). A Greenhouse–Geisser correction was used at the Peak panel and for the ratings to account for the violation of the Mauchly’s test of sphericity. We report the corrected p-values and corrected degrees of freedom. Post hoc analyses used a Bonferroni correction for multiple comparisons. Next, regressions were used to examine whether the different features functioned as predictors for viewing times at critical panels and for comprehensibility ratings. VLFI scores were correlated with the difference between the viewing times of inferential sequence types and those of the original sequence, to see an influence of comic expertise. The data and analyses have been made available in an online data repository (https://doi.org/10.34894/DTBW7M).

4. Results

4.1. Viewing times

We analyzed viewing times in a 2 (Position: critical panel and critical panel +1) × 6 (Sequence Type: original event panel, action star, onomatopoeia, echoic onlooker, metonymic selective framing, and metaphor) factorial ANOVA. There was a main effect of position, F(1, 1,392) = 281.62, p < 0.001, ηpartial2 = 0.16, with slower viewing times for panels at the critical panel +1 position (M = 1,902.13, SD = 862.21) opposed to panels at the critical Peak panel position (M = 1,255.58, SD = 597.11). There was also a main effect of sequence type, F(5, 1,392) = 9.04, p < 0.001, ηpartial2 = 0.03. Post hoc analyses outlined that the onomatopoeia (M = 1,403.90, SD = 731.54) was viewed faster than metonymic selective framing (M = 1,600.67, SD = 762.06), echoic onlookers (M = 1,672.72, SD = 857.23), and metaphors (M = 1,793.71, SD = 880.66). Likewise, the original event panel (M = 1,465.97, SD = 664.85) was viewed faster than echoic onlookers and metaphor, and finally, the action star (M = 1,536.18, SD = 877.30) and metonymic selective framing panel were read faster than the metaphor. Last, there was also an interaction effect, F(5, 1,392) = 8.54, p < 0.001, ηpartial2 = 0.02. To explore our findings here, we consider each position in their own analysis.

Fig. 2 shows the viewing times for the critical panel and critical panel +1 for all six sequence types at both panel positions. Viewing times were then analyzed at the third panel position, the critical Peak panel. There was a main effect of sequence type on the response times, F(4.34, 503.45) = 35.94, p < 0.001, ηpartial2 = 0.24. Post hoc analyses showed that both action stars and onomatopoeias were viewed faster than echoic onlookers, metonymic selective framing, metaphors, and original event panels (all ps < 0.001). Metonymic selective framing panels were faster than metaphors (p = 0.041).

Fig. 2. Overview of viewing times at the critical Peak panel and subsequent panel for all six sequence types; the error bars represent standard errors.

At the critical panel +1, the sequence type was shown to have a main effect on the response times, F(4.63, 536.67) = 23.60, p < 0.001, ηpartial2 = 0.17. The panels following original event Peaks were viewed faster than those after all inferential techniques (all ps < 0.001). Panels after onomatopoeias were viewed faster than those after action stars (p = 0.025) and metaphors (p < 0.001). Moreover, panels following echoic onlookers and metonymic selective framing were both viewed faster than those after metaphors (p = 0.037 and p < 0.001, respectively).

4.2. Comprehensibility rating

The sequence types differed in their comprehensibility ratings, F(4.29, 497.95) = 84.93, p < 0.001, ηpartial2 = 0.42. All conditions differed from each other (all p < 0.001) except for ratings between action stars and metonymic selective framing, and for ratings between echoic onlookers and metaphors (Fig. 3). Sequences with original event panels were rated most comprehensible (all p < 0.001), then sequences with onomatopoeias, which were rated higher than those with other inferential techniques (all p < 0.021). Last, sequences with action stars and metonymic selective framing were both rated more comprehensible than echoic onlookers and metaphors (all p < 0.001).

Fig. 3. Overview of the comprehensibility ratings for all six sequence types; the error bars represent standard error.

4.3. Features analysis

A multiple regression was used to investigate the predictive power of the underlying features for viewing times at the critical Peak panel, the critical panel +1, and for the comprehensibility ratings. Due to collinearity, the features [arousal] and [substitutive] were excluded from analysis. As [text] was unique to onomatopoeias, it was left out as well. Likewise, [affix] only pertained to onomatopoeias and action stars, which are affixes by definition, and did not apply to any other sequence type. Therefore, the final analysis included only the features [blend], [framing], and [explicit]. These features were then also correlated against one another to test their relationship, and appeared as valid predictors with a shared variance of .25 at most. To further examine their relative influence, we also conducted general dominance and relative importance analyses; the complete output can be found in the online repository.

At the critical panel, the regression showed that [blend], [framing], and [explicit] explained 28.2% of the variance in the viewing times (R 2 = 0.08, $ {R}_{\mathrm{Adjusted}}^2 $  = 0.06, F(3, 152) = 4.38, p = 0.005). Table 2 reports the t-values and p-values of each feature, and Fig. 4 graphs the positivity or negativity of the standardized betas. The feature [blend] led to slower viewing times. At the critical panel +1, the features explained 37.5% of the variance in viewing times (R 2 = 0.14, $ {R}_{\mathrm{Adjusted}}^2 $  = 0.12, F(3, 152) = 8.29, p < 0.001). Here, [framing] predicted slower viewing times, and [explicit] led to faster viewing times. For the comprehensibility ratings, the features explained 52.7% of the variance (R 2 = 0.28, $ {R}_{\mathrm{Adjusted}}^2 $  = 0.26, F(3, 152) = 19.48, p < 0.001). [Framing] predicted lower ratings, whereas [explicit] predicted higher ratings.

Table 2. Overview of t-values and p-values for each feature per dependent variable

Fig. 4. Beta-weights from a regression examining the influence of different features on the viewing times and self-rated comprehension of the sequence.

In addition to the inferential features, the cloze probability and the inference assessment scores were tested as predictors, but no significant relations emerged. In addition, we explored the relationship between inference assessment scores and comprehensibility ratings to assess whether better understanding of the sequence was related to the transparency of the missing event. Specifically, action stars were rated more comprehensible than echoic onlookers and metaphors, even though action stars remain the least explicit, giving more of an opportunity for readers to fill in the meaning. Thus, one could interpret action stars as merely signals to draw an inference, and comprehensibility ratings could inform how easy readers inferred those events. However, no relations emerged between these ratings and the inference assessment scores. An alternative possibility is that action stars allow readers to fill in information without additional conflict from explicitly presented information. The other suppletive Peaks may provide information that could conflict with a reader’s internally generated interpretation. For example, the incoming information in metaphor sequences may conflict with the internally represented event information, which gives way to an inference (metaphor) to explain that relationship. Action stars being fairly inexplicit, however, may readily connect to internal representations.

Furthermore, we correlated inference assessment scores also with ratings across all sequences, which showed that higher comprehensibility ratings aligned with lower inference assessment scores (p = 0.037). Potentially, when the first two panels of a sequence did not elicit a clear internal interpretation, an implicit cue (i.e., the inferential technique) aided understanding. In contrast, for those sequence that were easy to infer the implicit cue may have conflicted with the internally generated interpretation, decreasing comprehensibility.

4.4. Visual language fluency

To examine the influence of comic reading expertise on the magnitude of response, we correlated VLFI scores with the difference between the viewing time or rating of the original event panel subtracted from that of each inferential technique. At the critical panel, the difference between original event panels and echoic onlookers was greater for more experienced comic readers than for less experienced readers, r(115) = 0.20, p = 0.035. As the mean difference score for echoic onlookers was a negative value, this suggests that echoic onlookers were read faster than the original event panels. At the critical panel +1, higher comic expertise indicated slower viewing times for panels after metaphoric than original Peaks, r(115) = 0.22, p = 0.017, as there, the mean difference score for metaphors was a positive value. For comprehensibility ratings, there were no significant correlations.

5. Discussion

This experiment compared the self-paced viewing times of inferential techniques in visual narratives. We found that all panels following an inferential technique were viewed longer than the panel following original event panels, but with varying differences across sequence types. Inferential panels with generally fewer visual cues (action stars and onomatopoeia) were viewed faster than those with more details (echoic onlookers and metaphors); metonymic selective framing was left somewhat in the middle. Analysis of features suggested that faster processing at the subsequent panel aligns with higher comprehensibility ratings, whereas slower viewing times align with lower ratings. Overall, narrative techniques motivate inference generation in different ways, and features persisting across these techniques may influence their comprehension.

At the Peak panel, the differences in viewing times between inferential techniques did not necessarily indicate variance in inference generation. Rather, the most salient difference between techniques was the faster viewing times for action star and onomatopoeia panels. This could raise the question whether these were simply easier to process based on their input or whether readers instead did not process these as deeply, a distinction between intrinsic and germane cognitive load (Sweller, Reference Sweller2010). The consistently longer viewing times at the subsequent panel suggested that these viewing time differences did not pertain to deepness of processing, but rather to differences in surface-level structures. The faster viewing times made to action stars and onomatopoeias specifically seemed related to visual complexity of the panels themselves (Cohn, Reference Cohn2021; Cohn & Wittenberg, Reference Cohn and Wittenberg2015). The results supported SPECT’s (Loschky et al., Reference Loschky, Larson, Smith and Magliano2020) predictions that less content should require fewer eye fixations, and thus result in faster viewing times. This may also explain the relatively fast processing of metonymic selective framing panels – which showed reduced visual content (e.g., parts of characters/objects) and/or motion lines – compared to more complex content (echoic onlookers and metaphors).

Nevertheless, our analysis of features showed that visual complexity alone did not predict the viewing time results. Here, the [blend] feature predicted slower viewing times of Peak panels, which fits with the slowly processed metaphors and to some extent with metonymic selective framing. Evidently, effects at the Peak do not necessarily carry through to subsequent panels or comprehensibility, as this feature appeared of no influence there. Seemingly, at this point in the sequence, viewing times may be influenced more by the quantity of visual cues than the nature of those cues.

Evidence of inferential processing appeared at the subsequent panel where the viewing times of panels following inferential techniques were all longer than following the original event panel (Cohn & Kutas, Reference Cohn and Kutas2015; Cohn & Wittenberg, Reference Cohn and Wittenberg2015; Huff et al., Reference Huff, Rosenfelder, Oberbeck, Merkt, Papenmeier and Meitz2020). Here again, viewing times differed between inferential techniques. The fastest viewing times came to panels that followed explicit inferential techniques (onomatopoeia, echoic onlookers, and metonymic selective framing), suggesting that although this explicitness did not necessarily affect initial processing at the Peak panel, it benefited comprehension at the subsequent panel. Conversely, the relatively inexplicit action stars and metaphors had the slowest viewing times. Comparing the explicit onomatopoeia and inexplicit action star, both similar in their visual complexity, at this subsequent panel, further supports how readers process the information of these Peaks deeply enough and how those cues become relevant predominantly when an inference is prompted. Namely, the onomatopoeia expressed a distinct sound effect most appropriate for a particular event, which makes it more informative than the identical action star across sequences. This facilitated inference resolution to a larger degree, so similarly simple content can still have varying consequences. Action stars provide little semantic information at all, thus requiring updating at the final panel (Cohn & Wittenberg, Reference Cohn and Wittenberg2015), but panels after metaphors evinced the longest viewing times. Although metaphoric panels show explicit events, on the surface they are incongruous, not showing events that actually occur in the sequence. Since metaphors were not viewed slower than the congruous original event panels at the Peak position, it suggests that at this moment readers do not consider them fully anomalous (Cohn & Wittenberg, Reference Cohn and Wittenberg2015). Rather, this non-sequitur information needs to be resolved with the sequence’s events in order to remain congruent. Indeed, this may not have always been achieved, as sequences with metaphoric Peaks had the lowest comprehensibility ratings. The panels following metaphors also correlated with comic reading expertise, such that more fluent comic readers spent more time on them. Metaphors thus appear a relatively difficult inferential device, and perhaps especially odd as a Peak for those more familiar with comics.

Contrary to the Peak panel, the [blend] feature did not predict viewing times at the subsequent panel, but [framing] did predict slower viewing times despite not influencing the preceding panel. This may explain why the panels after echoic onlookers and metonymic selective framing (both with [framing] features) were slower than those after onomatopoeia, despite all being explicit. Both our standardized beta-weights and our additional analyses of dominance and importance (see online repository) suggest that features may exert various levels of strength in relationship to one another, like ‘preference rules’ in dynamic systems described in approaches to the cognition of music or in theories of Gestalt psychology (Jackendoff & Lerdahl, Reference Jackendoff and Lerdahl2006; Lerdahl et al., Reference Lerdahl, Jackendoff and Slawson1985). As this is the first study to investigate these inferencing techniques in this way, future studies can better assess the relative influences and constraints on these features.

Explicitness also predicted the comprehensibility ratings to inferential techniques, which were all below ratings to the original sequences. Both onomatopoeias and metonymic selective framing were rated high. Only the explicit echoic onlookers scored low, which could be due to foregrounding more characters than other techniques, complicating the sequence. Moreover, in some sequences, echoic onlookers were introduced in the background of previous panels, as in Fig. 1d, but in others the onlooker(s) appeared for the first time in the Peak. Readers thus may have disliked encountering novel characters this late in the sequence, since unexpected entities require more mental model updating (Cohn & Kutas, Reference Cohn and Kutas2015; Reid & Striano, Reference Reid and Striano2008).

Among the inexplicit techniques, metaphors were also rated low, possibly due to the extended updating needed to interpret them, whereas action stars were rated high. Their ratings may have been motivated by their familiarity, as conventionalized units within comics (Cohn, Reference Cohn2021; Cohn & Wittenberg, Reference Cohn and Wittenberg2015), arguably more so than metaphors. Moreover, action star sequences were viewed faster than metaphor sequences, and potentially comprehensibility ratings reflect the effort required for inference resolution. The more effort the reader had to put in, the less understandable they perceived it to be.

Finally, the analysis of features offered insight into the flow of information across viewing times at the Peak, the subsequent panel, and comprehensibility ratings. While most features appeared of no influence at the Peak, converse trends appear afterward: a feature predicting slower times at the subsequent panel also predicted lower ratings, and faster times aligned with higher ratings. These results are broadly consistent with theories that greater access of information in one panel would lead to subsequent facilitation (or vice versa) across the course of the sequence (Cohn, Reference Cohn2020b; Loschky et al., Reference Loschky, Larson, Smith and Magliano2020), overall affecting comprehensibility.

6. Experiment 2: comparing combinations of techniques

Experiment 1 showed differences in processing and comprehensibility between inferential techniques. Yet, features stretching across the conventionalized techniques interacted to exert relative strengths, which we aimed to explore further. One of the most prominent features affecting inferences and comprehensibility was explicitness, and this feature also underlies the onomatopoeia, an inferential technique readily combinable with other panels. Therefore, to assess additive or competing features, Experiment 2 compared combining onomatopoeia with action stars, echoic onlookers, metaphors, and original event panels (see Fig. 5), to their ‘silent’ versions (as shown in Fig. 1).

Fig. 5. Examples of the onomatopoeia combination panels for (a) action stars, (b) echoic onlookers, (c) metaphors, and (d) original event panels. The images are slightly adapted from Peanuts comics; Peanuts is © Peanuts Worldwide LLC.

Adding onomatopoeias to panels makes them multimodal. Switching modalities to a fully textual panel may incur costs to recode information to fit the visually based mental model of the rest of the sequence (Huff et al., Reference Huff, Rosenfelder, Oberbeck, Merkt, Papenmeier and Meitz2020). However, this effect appeared for phrasal descriptions of events rather than single word sound effects. Indeed, Manfredi et al. (Reference Manfredi, Cohn and Kutas2017) found that inferential panels with only descriptions of events (‘Punch!’) were regarded as more unusual than onomatopoeias (‘Pow!’). Typical onomatopoetic (nondescriptive) sound effects are a common device in comics (Guynes, Reference Guynes2014; Pratha et al., Reference Pratha, Avunjian and Cohn2016), and as such, could be easier to digest than a fully phrasal description. In addition, sound effects can take on image-like qualities, styled to fit the visuals in a way unlike other text elements (Pratha et al., Reference Pratha, Avunjian and Cohn2016). Thus, while panels with onomatopoeia are multimodal, sound effects may not incur as much a cost of switching modalities as other text. Other work has demonstrated that processing costs interface with congruity (Manfredi et al., Reference Manfredi, Cohn, De Araújo Andreoli and Boggio2018), so as long as the multimodal combinations are congruous, they are processed easier.

Experiment 2 thus explores the processing and comprehension of combining onomatopoeia with other inferential techniques. Based on Experiment 1, multimodal versions would be viewed faster than unimodal versions due to the added effect of the [explicit] feature. However, as the additional visual complexity of multimodal versions compared to unimodal versions likely increases viewing times as well, we ultimately expect slower viewing times for panels including onomatopoeias. At the subsequent panel, the explicitness of onomatopoeias should lead to shorter viewing times, further facilitating the bridging inferences, and thus leading to higher comprehensibility ratings.

7. Methods

7.1. Stimuli

Experiment 2 used the same 30 strips from Experiment 1 along with two additional strips to sufficiently counterbalance the number of strips per condition. The Peak panels were shown either as in Experiment 1 (Fig. 1) or combined with an onomatopoeia (Fig. 5). Consequently, no sequence type used only onomatopoeia panels, and metonymic selective framing panels were also excluded. This resulted in a 2 (Modality: unimodal and multimodal) × 4 (Sequence Type: action star, echoic onlooker, metaphor, and original event panel) design with the eight conditions counterbalanced into eight lists using a Latin Square Design.

As the inferential assessment scores showed that three strips from Experiment 1 were too hard to infer, these strips were also excluded from analyses in Experiment 2.

7.2. Participants

Participants were again recruited via social media and a participant pool available through Tilburg University, and all gave their consent to participate. The sample consisted of 70 participants with a mean age of 29.73 years (SD = 10.98, range: 17–61, 32 male, 35 female, 3 other). Although statistical power was not calculated a priori, a post hoc power analysis in G*Power again indicated sufficient power. A sample of 70 participants across eight conditions required F-values of above 2.03 to achieve a medium effect size of 0.25, which were met. The mean VLFI score was again average, at 12.24 (SD = 9.48, range: 1.6–34).

7.3. Procedure

The procedure was the same as for Experiment 1.

7.4. Data analysis

The same outlier removal process was used as in Experiment 1, resulting in removal of six participants, for a sample of 70 completed responses. Viewing times and comprehensibility ratings were averaged across items for each participant.

First, we conducted a 2 (Position: critical panel and critical panel +1) × 2 (Modality: unimodal and multimodal) × 4 (Sequence Type: action star, echoic onlooker, metaphor, and original event panel) factorial ANOVA for viewing times to examine the influence of position, the inclusion of a sound effect, and type of Peak. The data were further analyzed using a 2 (Modality: unimodal and multimodal) × 4 (Sequence Type: action star, echoic onlooker, metaphor, and original event panel) factorial ANOVA to look at viewing times at the Peak and subsequent panels separately, and the comprehensibility rating for the sequence. A regression again tested properties of the stimulus items, including the features as predictors. Additional correlations examined VLFI scores with the difference between viewing times of inferential techniques and viewing times of the normal sequence. The data and analyses are accessible in an online data repository (https://doi.org/10.34894/DTBW7M).

8. Results

8.1. Viewing times

Viewing times were analyzed in a 2 (Position: critical panel and critical panel +1) × 2 (Modality: unimodal and multimodal) × 4 (Sequence Type: action star, echoic onlooker, metaphor, and original event panel) factorial ANOVA, which showed a main effect of position, F(3, 1,104) = 160.49, p < 0.001, ηpartial2 = 0.12. As in Experiment 1, panels at the critical panel +1 position were viewed slower (M = 1,697.31, SD = 845.00) than those at the critical Peak panel position (M = 1,181.30, SD = 520.94). There was also a main effect of sequence type, F(3, 1,104) = 11.83, p < 0.001, ηpartial2 = 0.03. Post hoc analyses indicated that panels in sequences with the original events (M = 1,314.20, SD = 541.19) were viewed faster than metaphors (M = 1,618.51, SD = 840.36) and echoic onlookers (M = 1,481.66, SD = 810.70). Moreover, sequences with action stars (M = 1,342.86, SD = 725.39) were viewed faster than those with metaphors. Finally, an interaction appeared between position and sequence type, F(3, 1,104) = 12.81, p < 0.001, ηpartial2 = 0.03, which was explored further through separate analyses for each position.

At the critical Peak panel, viewing times were analyzed in a 2 (Modality: unimodal and multimodal) × 4 (Sequence Type: action star, echoic onlooker, metaphor, and original event panel) design, and differed across Sequence Type, F(3, 552) = 12.80, p < 0.001, ηpartial2 = 0.07. As depicted in Fig. 6, action stars were viewed faster than echoic onlookers, metaphors, and original event panels (all p < 0.001). A main effect also appeared for Modality, F(1, 552) = 8.18, p = 0.004, ηpartial2 = 0.02, because viewing times for multimodal panels were slower than unimodal panels. There was no interaction, F(3, 552) = 0.22, p = 0.883.

Fig. 6. Overview of viewing times at the critical Peak panel and subsequent panel for all eight sequence types; the error bars represent standard error.

At the critical panel +1, a main effect of Sequence Type, F(3, 552) = 12.14, p < 0.001, ηpartial2 = 0.06, arose because, as shown in Fig. 6, panels after original events were viewed faster than those after action stars, echoic onlookers, and metaphors (all ps < 0.005). There was no main effect for Modality, nor an interaction (all p > 0.576).

To explore the seemingly consistent difference across conditions evoked by the onomatopoeia, we calculated the mean difference between Modality conditions by subtracting the unimodal condition from the multimodal one. At the Peak panel, all viewing times to multimodal conditions increased by roughly 85–160 ms. An ANOVA tested the difference in viewing times at the Peak panel as the dependent variable, with Sequence Type as the independent variable. There was no main effect, F(3, 280) = 0.48, p = 0.698, suggesting no differences between sequence types. This consistent increase at the Peak panel hints at a uniform processing time required by the additional word across multimodal versions. For the subsequent panel, viewing times of multimodal action stars and original event panels increased by roughly 54 and 87 ms, respectively, whereas echoic onlookers and metaphors decreased by around 150 and 88 ms. Here too, no main effect was found (p = 0.062).

8.2. Comprehensibility rating

A main effect of Sequence Type, F(3, 552) = 49.62, p < 0.001, ηpartial2 = 0.21, reflected that sequences with the original Peaks were rated as most comprehensible (all p < 0.001), followed by action stars and then the echoic onlookers, which were both rated higher than metaphors (all ps < 0.005), as shown in Fig. 7. There was no main effect for Modality, nor an interaction (all ps > 0.304).

Fig. 7. Overview of the comprehensibility ratings for all eight sequence types; the error bars represent standard error.

8.3. Features analysis

Here too, we first correlated the relevant features of [blend], [framing], and [explicit] against one another to test their relationship and found them to be valid predictors with a shared variance of 0.11 at most. General dominance and relative importance analyses can be found in the online repository.

At the critical Peak panel, the multiple regression for [blend], [framing], and [explicit] showed that the model explained 32.6% of the variance in the viewing times (R 2 = 0.11, $ {R}_{\mathrm{Adjusted}}^2 $  = 0.09, F(3, 220) = 8.75, p < 0.001). Table 3 reports the t-values and p-values of each feature, and Fig. 8 graphs the positivity or negativity of the standardized betas. Both [blend] and [explicit] predicted slower viewing times. At the critical panel +1, the features explained 33.2% of the variance in viewing times (R 2 = 0.11, $ {R}_{\mathrm{Adjusted}}^2 $  = 0.10, F(3, 220) = 9.07, p < 0.001). Here, [blend] and [framing] led to longer viewing times, whereas [explicit] predicted faster viewing times. For the comprehensibility ratings, the features explained 53.6% of the variance (R 2 = 0.29, $ {R}_{\mathrm{Adjusted}}^2 $  = 0.28, F(3, 220) = 29.61, p < 0.001). [Blend] and [framing] predicted lower ratings, and [explicit] predicted higher ratings.

Table 3. Overview of t-values and p-values of each feature per dependent variable

Fig. 8. Beta-weights from a regression showing the influence of different features on the viewing times and self-rated comprehension of the sequence.

As in Experiment 1, we also tested cloze probability and inference assessment as predictors, but again no relations emerged.

8.4. Visual language fluency

At the critical Peak panel, VLFI scores correlated with the differences between original events with multimodal action stars and with unimodal metaphors (respectively, r(68) = 0.24, p = 0.040, and r(68) = 0.24, p = 0.041). Smaller differences were found for experienced comic readers between original event panels and multimodal action stars, suggesting that these were read faster by experienced viewers, while expertise again led to longer viewing times for unimodal metaphors than original event panels, as the mean difference score here was a positive value. At the critical panel +1, VLFI scores correlated with the difference between original event panels and action stars in both versions (multimodal: r(68) = 0.30, p = 0.012; unimodal: r(68) = 0.31, p = 0.008), and metaphors in both versions (multimodal: r(68) = 0.25, p = 0.035; unimodal: r(68) = 0.28, p = 0.020). In all cases, higher comic expertise (VLFI) correlated with slower viewing times for these sequence types’ final panel relative to the original event panels.

9. Discussion

Experiment 2 combined inferential techniques to investigate the effect on inferential processing and comprehension, and the influence of the (combined) features. At the Peak, panels with minimal visual content (action stars and their multimodal versions) were viewed faster than the other techniques, similar to Experiment 1 (see also Cohn & Wittenberg, Reference Cohn and Wittenberg2015). Moreover, all multimodal panels were processed longer than the unimodal versions, but this did not create differences at the subsequent panel. As in Experiment 1, all panels following an inferential technique required more time than panels following the original Peaks. These results indicate that adding explicit cues to inferential techniques does not facilitate inference resolution, but may increase processing demands at the Peak.

At the Peak, SPECT (Loschky et al., Reference Loschky, Larson, Smith and Magliano2020) again well explains the results, since readers slowed down for panels combining techniques, and thus with more visual cues, relative to the unimodal Peaks. Multimodal sequence types had a noticeably consistent increase in viewing times, suggesting a similar number of extra fixations needed to extract the additional onomatopoeia, while little inference resolution occurred at this moment in the sequence. As in Experiment 1, the action stars were viewed the fastest, reinforcing the effect of visual complexity. While possibly motivated by the visual cues alone, these results also aligned with the predictions of the [explicit] feature slowing down viewing times.

At the subsequent panel, longer viewing times appeared to all inferential techniques than the original event panel, again suggesting that the inference is resolved after the uninformative Peak. The added sound effect did not facilitate inference resolution, since no difference arose between the unimodal and multimodal inferential techniques. However, a trend arose that viewing times seemed to slightly increase for original panels and action stars when combined with sound effects and decreased for echoic onlookers and metaphors with sound effects. This supported [blend] and [framing] features aligning with slower viewing times seemingly more so than the increase in viewing times associated with additional explicitness. This trend in general may suggest that a more overt cue is not beneficial when combined with other techniques; possibly, such integration is more costly. It seems that the current experiment lacked power to reveal such a two-way interaction, which would be relevant for future research to test further.

Nevertheless, readers did process the sound effect, as shown at the Peak, but this explicit cue then had no apparent benefit for processing the subsequent panel. Potentially, sound effects are perceived as ‘supplementary’ elements to complement the action but with the visual events still carrying the most semantic weight (Cohn, Reference Cohn2016). As reinforced by the ratings, the onomatopoeia could be easily deleted with no consequences for the comprehensibility of the sequence. Thus, they appear not essential for deriving meaning here. On their own, as in Experiment 1, they facilitated inference resolution, so seemingly onomatopoeias have different semantic contributions based on how they are used.

In addition, no difference in comprehensibility ratings appeared for multimodal versus unimodal sequences. These ratings suggest that comprehensibility seems most informed by the inference resolution, which appeared not to be affected by the multimodality. As in Experiment 1 and previous work (Cohn & Kutas, Reference Cohn and Kutas2015), the original event panels were rated as the most comprehensible. This aligns with explicitness predicting higher ratings. [Framing] and [blend] both predict low scores, concurring with low ratings for onlookers and metaphors. Action stars are rated relatively high, most likely due to being a familiar part of the visual lexicon of comics (Cohn, Reference Cohn2021; Cohn & Wittenberg, Reference Cohn and Wittenberg2015).

In these contrasts, the features now predicted an even more recognizable trade-off, where more explicit cues at the Peak facilitate viewing times at the subsequent panel and ultimately higher comprehensibility ratings, as in previous studies (Cohn & Kutas, Reference Cohn and Kutas2015; Cohn & Paczynski, Reference Cohn and Paczynski2013). This is also consistent with eye-movement studies showing that typicality affects how fast a bridging inference is constructed (Myers et al., Reference Myers, Cook, Kambe, Mason and O’Brien2000) and that predictive inferences facilitate processing when the following information aligns (Calvo, Reference Calvo2010; Calvo et al., Reference Calvo, Meseguer and Carreiras2001). Forward inferencing requires the context to be highly constraining, which has been tested with our inference assessment scores. Presumably, the explicit cue sets up a likely interpretation and if this is reflected in the final panel, processing of this event is facilitated. Moreover, as in Experiment 1, though not significant at the Peak, [framing] led to increased effort at the subsequent panel and lower ratings. Last, in these results, [blend] also affected the subsequent panel and ratings, but consistently negative rather than a reverse effect across panels.

10. General discussion

This paper presented two experiments comparing inferential climactic panels in visual narratives, expanding on previous work on inference which focused on omitting Peak information (Hutson et al., Reference Hutson, Magliano and Loschky2018; Magliano et al., Reference Magliano, Larson, Higgs and Loschky2016, Reference Magliano, Kopp, Higgs and Rapp2017). Experiment 1 found that inferential techniques indeed differ in processing and comprehensibility, with visual complexity, explicitness, and framing emerging as contributing factors. Experiment 2 showed further that combining onomatopoeia may not necessarily clarify the missing event, despite being relatively easy to understand on its own. Across both studies, underlying features exerted competing influences on viewing times, but [explicit] and [framing] features consistently informed the processing of the subsequent panel and overall sequence comprehensibility.

Our primary finding was that inferential techniques motivate different processing. At both the Peak and subsequent panels, variations in viewing times arose across the techniques in both experiments. In combination with comprehensibility ratings, these results could support that some techniques were more successful in implying the unseen event than others. In Experiment 1, lower ratings aligned with longer viewing times at the panel following an inferential Peak. As inference resolution was hypothesized to occur at this panel, it implies that harder to interpret events led to readers understanding it less. In Experiment 2, panels following inferential techniques produced similar viewing times, but such sequences were rated distinctively. Thus, comprehensibility may not always align with the incremental panel-to-panel processing.

As with other studies, these results indicate that inference generation primarily occurs at the panel following inferential Peaks, despite such techniques operating specifically to omit events in different ways. Rather, at the Peaks, visual complexity exerted strong influence on viewing times, with less complex elements such as action stars and onomatopoeias processed faster. Such results are in line with SPECT’s prediction that fewer cues to extract lead to fewer fixations (Loschky et al., Reference Loschky, Larson, Smith and Magliano2020), and complement work examining eye-tracking of sequences with omitted information to generate bridging inferences (Hutson et al., Reference Hutson, Magliano and Loschky2018). There, an omitted event motivated a more intense search for cues at the final panel to facilitate generating the inference. As this study replicates the longer viewing times for panels after omitted events (Cohn & Wittenberg, Reference Cohn and Wittenberg2015; Hutson et al., Reference Hutson, Magliano and Loschky2018; Magliano et al., Reference Magliano, Larson, Higgs and Loschky2016), it also implies that more fixations occur following when an inferential Peak is present, not just when events are omitted outright.

Although inferential Peaks are distinct, similarities persisted in their features at a more latent level. Analysis of these features suggest that they function like ‘preference rules’, exerting relative strengths. Yet, some noteworthy trade-off patterns appeared across our studies: explicitness consistently facilitated viewing times at the subsequent panel and enhanced comprehensibility, while [framing] slowed down viewing times and decreased ratings. In Experiment 2, the [explicit] effect was even more overt, stretching the pattern to the Peak as well. Here, longer processing at the Peak ultimately benefited processing and comprehensibility judgment afterward. This difference across experiments is likely motivated by more panels including explicit cues in the second set-up, since the additional cue was not only informative, but its mere presence naturally necessitated more eye fixations. This cascading effect of features of a Peak panel on the subsequent sequence suggested that such features at least in some cases may extend beyond descriptive theoretical constructs, as posited in Cohn (Reference Cohn2019). Despite these hints at the influence of features, the precise alchemy of featural interactions remains unknown, supported also by the varying influence of [blend] across experiments. Future work could continue to explore these features with other contrasts.

Overall, we investigated the consequences of using inferential Peak panels to elicit bridging inference rather than omitting the Peak entirely. While differences persisted across techniques, the explicitness and framing of the inferential Peak consistently informed their processing and comprehension. Inference always occurs within the context of a particular structure, and as shown here, this structure influences how inferences may be drawn. Thus, identifying and studying those patterns is essential for studying inference, beyond merely omitting events.

Data availability statement

The data that support the findings of this study are openly available in Processing and understanding inferential techniques in visual narratives at https://doi.org/10.34894/DTBW7M, V2.

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Figure 0

Fig. 1. Visual narrative sequences with (a) an explicit event, (b) an action star, (c) an onomatopoeia, (d) an echoic onlooker, (e) metonymic selective framing, and (f) a metaphor. Images are slightly adapted from Peanuts comics; Peanuts is © Peanuts Worldwide LLC.

Figure 1

Table 1. Overview of the distribution of features across inferential techniques

Figure 2

Fig. 2. Overview of viewing times at the critical Peak panel and subsequent panel for all six sequence types; the error bars represent standard errors.

Figure 3

Fig. 3. Overview of the comprehensibility ratings for all six sequence types; the error bars represent standard error.

Figure 4

Table 2. Overview of t-values and p-values for each feature per dependent variable

Figure 5

Fig. 4. Beta-weights from a regression examining the influence of different features on the viewing times and self-rated comprehension of the sequence.

Figure 6

Fig. 5. Examples of the onomatopoeia combination panels for (a) action stars, (b) echoic onlookers, (c) metaphors, and (d) original event panels. The images are slightly adapted from Peanuts comics; Peanuts is © Peanuts Worldwide LLC.

Figure 7

Fig. 6. Overview of viewing times at the critical Peak panel and subsequent panel for all eight sequence types; the error bars represent standard error.

Figure 8

Fig. 7. Overview of the comprehensibility ratings for all eight sequence types; the error bars represent standard error.

Figure 9

Table 3. Overview of t-values and p-values of each feature per dependent variable

Figure 10

Fig. 8. Beta-weights from a regression showing the influence of different features on the viewing times and self-rated comprehension of the sequence.

Supplementary material: Link

Klomberg and Cohn Dataset

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