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8 - Techniques That Increase Generative Processing in Multimedia Learning: Open Questions for Cognitive Load Research

Published online by Cambridge University Press:  05 June 2012

Roxana Moreno
Affiliation:
University of New Mexico
Richard E. Mayer
Affiliation:
University of California, Santa Barbara
Jan L. Plass
Affiliation:
New York University
Roxana Moreno
Affiliation:
University of New Mexico
Roland Brünken
Affiliation:
Universität des Saarlandes, Saarbrücken, Germany
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Summary

In Chapter 7, we defined multimedia learning, described how people learn from verbal and pictorial information according to the Cognitive Theory of Multimedia Learning (CTML; Mayer, 2005), and examined the relationship between CTML and cognitive load theory (CLT; Sweller, 1999). Specifically, we offered a triarchic theory of cognitive load according to which there are three kinds of cognitive processing demands during learning: extraneous, essential, and generative. We defined extraneous processing as the cognitive processes that are not necessary for making sense of the new information, essential processing as the cognitive processes that are required to mentally select the new information that is represented in working memory, and generative processing as the processes of mentally organizing the new information into a coherent structure and integrating the new knowledge representations with prior knowledge.

As explained in the previous chapter, the different nature of the three cognitive demands suggests three goals for the design of multimedia learning environments, namely, to reduce extraneous cognitive processing, to help students manage essential cognitive processing, and to foster generative processing. In the present chapter, we focus on the third of these goals by reviewing techniques that are aimed at increasing generative processing in multimedia learning. As in Chapter 7, the methods reviewed in the present chapter have been distilled from the research program of the authors, which is aimed at better understanding how aspects of media design correspond to the cognitive processes that affect knowledge acquisition.

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Cognitive Load Theory , pp. 153 - 178
Publisher: Cambridge University Press
Print publication year: 2010

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