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Measuring consumers’ demand for nutrition attributes: an application to ready-to-heat meals

Published online by Cambridge University Press:  26 July 2022

Qi Zhang
Affiliation:
School of Economic Sciences, Washington State University, Pullman, WA, USA
R. Karina Gallardo*
Affiliation:
School of Economic Sciences, Puyallup Research and Extension Center, Washington State University, Puyallup, WA, USA
*
*Corresponding author. Email: Karina_Gallardo@wsu.edu

Abstract

This study analyzes consumers’ preferences for nutrition and convenience attributes in ready-to-heat meals, using grocery scanner data applied to a Berry, Levinsohn, and Pakes model. Households’ preferences for convenience meals stem on saving time. Also, households prefer convenience meals with higher contents of sugar, fat, sodium, cholesterol, and fiber, and lower in calorie content. Results prove that consumption of convenience foods implies a high intake of ingredients with negative consequences on dietary quality and health. Findings showcase the importance of the advancement and adoption of alternative food processing technologies that would circumvent the production of convenient foods high in non-healthy ingredients.

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
© The Author(s), 2022. Published by Cambridge University Press on behalf of the Northeastern Agricultural and Resource Economics Association

Introduction

Fast-paced modern lifestyles result in households having less time for food preparation at home. As a result, convenience as a food attribute is increasing in importance for consumers (Jabs and Devine Reference Jabs and Devine2006; Li et al. Reference Li, Jaenicke, Anekwe and Bonanno2018). Consumers’ expenditures on convenience food have been on the rise in the United States (Funk and Kennedy Reference Funk and Kennedy2016). In fact, Zhang and Gallardo (Reference Zhang and Gallardo2018) analyzed grocery store scanner data for the United States and found that convenient, prepared meal purchases increased by almost 50% between 2008 and 2016.

The main driver for the consumption of ready meals is the saving physical and mental energy in planning, meal preparation, and post-meal activities (Scholderer and Grunert Reference Scholderer and Grunert2005; Scholliers Reference Scholliers2015). However, the preference for convenience foods comes at the expense of perceived healthiness and freshness (Amani and Gadde Reference Amani and Gadde2015; Cavaliere and Ventura Reference Cavaliere and Ventura2018), also nutritional content (Cook et al. Reference Cook, Cutler, Obarzanek, Buring, Rexrode, Kumanyika and Whelton2007; Barnett et al. Reference Barnett, Sablani, Tang and Ross2019). It has been argued that increased consumption of, in general, processed foods is the primary driver of increased sodium, fat, and sugar consumption, in many developed countries, leading to increasing obesity rates. In fact, the 2010 Dietary Guidelines for Americans recommends decreasing the consumption of added sugar, saturated fats, and sodium and recognizes that convenient processed foods are the primary source of these dietary components (Okrent and Kumcu Reference Okrent and Kumcu2016). This is aligned with observations in the United Kingdom, where over-reliance on convenience foods, namely ready meals, is suspected to contribute to increases in obesity rates within the population (Remnant and Adams Reference Remnant and Adams2015).

There are scant studies analyzing the association between the preference for convenience foods and the intake of unhealthy ingredients. The motivation for this study is to analyze consumers’ preferences for the convenience aspect of ready meals along with the preferences for meals’ ingredients with a negative impact on health (i.e., sugar content, total fat, sodium, and cholesterol) but that are crucial to ensure an appealable flavor. Ready meals using food processing technologies in its current inception require the addition of unhealthy ingredients to guarantee an appealable flavor (Tang Reference Tang2015; Barnett et al. Reference Barnett, Sablani, Tang and Ross2019). Barnett et al. (Reference Barnett, Sablani, Tang and Ross2020) point that reducing unhealthy ingredients such as sodium in prepared meals is a challenge that even after extensive reformulation and consumer sensory testing there is no guarantee of consumers’ acceptance. Considering that the demand for convenient ready meals has followed an increasing trend, it is important to advance food processing technologies that would not require the addition of large amounts of unhealthy ingredients and yet remain flavorful (Tang Reference Tang2015; Barnett et al. Reference Barnett, Sablani, Tang and Ross2019; Barnett et al. Reference Barnett, Sablani, Tang and Ross2020).

The objective of this study is to estimate the marginal prices paid for nutritional contentFootnote 1 (e.g., sugar, total fat, sodium, calorie, fiber, and cholesterol), along with meal preparation time of ready-to-heat meals. This study uses the Information Resources Inc. (IRI) grocery store scanner data set and applies the Berry, Levinsohn, and Pakes (BLP) random coefficients logit model to estimate the marginal values and distributions for meal preparation time and nutritional content variables mentioned above. This study poses a unique analysis of the values households assign to convenience and nutritional quality when purchasing grocery store ready-to-heat meals produced with current food processing technologies.

Ready-to-heat meals are a type of ready meal requiring only mild heating (less than or equal to 15 minutes on the stovetop, less than or equal to 20 minutes in a conventional oven, or less than or equal to 10 minutes in a microwave oven) before consumption. Examples of these foods are chilled/frozen pizzas, frozen/refrigerated main courses, and shelf-stable soups (Costa et al. Reference Costa, Dekker, Beumer, Rombouts and Jongen2001). These food meals bought in stores and prepared at home by reheating are considered the prototypical convenience food (Verlegh and Candel Reference Verlegh and Candel1999).

Literature review

The term convenience has been used in the literature with different connotations, but there is consensus that convenience is associated with any aspect of the food that would enable saving physical and mental energy, as well as time, in grocery planning and shopping, meal preparation, consumption, and post-meal activities such as clean up (Scholderer and Grunert Reference Scholderer and Grunert2005; Scholliers Reference Scholliers2015). Of all those activities, meal preparation is the most time-intensive. Okrent and Kumcu (Reference Okrent and Kumcu2016) report that between 2003 and 2011, women in the United States spent on average 48 minutes on meal preparation (men spent 18 minutes on average); whereas, in 1920, rural women in the United States spent on average 122 minutes cooking and 68 minutes on meal clearing and clean up.

Several studies have analyzed consumer’s demand for ready meals. Capps, Tedford, and Havlicek (Reference Capps, Tedford and Havlicek1985) found that manufactured convenience foods (e.g., foods with no home-prepared counterparts) were more responsive to own-price changes compared to the nonconvenience foods (e.g., the fresh, unprocessed, or home-produced foods) and that basic convenience foods (e.g., food where processing was more related to the preservation method rather than ease of preparation) were more sensitive to own-price changes than complex convenience foods (e.g., multi-ingredient foods with high levels of time-saving and energy inputs). Verlegh and Candel (Reference Verlegh and Candel1999) found that the working status of the person responsible for preparing meals at home had a significant and positive relationship with the consumption of convenience meals. De Boer et al. (Reference De Boer, McCarthy, Cowan and Ryan2004) found that the importance of freshness negatively affected the purchase of ready meals and that increases in the perceived time pressure positively contributed to the purchase of ready meals. Harris and Shiptsova (Reference Harris and Shiptsova2007) found that households with increased disposable incomes, for whom the opportunity cost of time was higher, were positive to expenditures on ready meals. To sum, these studies concur that disposable time and income are positively associated with the purchases of convenience meals, whereas the notion of freshness negatively impacted its purchase.

Consumers’ preferences for nutritional content are typically associated with preferences for health-related aspects of consuming a food product. Specific to convenience foods, Binkley (Reference Binkley2006) and Burton, Howlett, and Tangari (Reference Burton, Howlett and Tangari2009) proved that nutritional content has little impact on the consumption of food away from home. This contrasts with general grocery store food products, like bread, for which nutritional content has a positive impact on consumers’ preferences (Ginon et al. Reference Ginon, Lohéac, Martin, Combris and Issanchou2009). There are no conclusive findings for ready meals. Geeroms, Verbeke, and Van Kenhove (Reference Geeroms, Verbeke and Van Kenhove2008) found that health-related statements do not have an impact on consumers’ preferences for ready meals. Remnant and Adams (Reference Remnant and Adams2015) found that ready meals exhibited high contents of saturated fat and salt and low sugars, compared to the nationally recommended UK front-of-pack labeling. Interestingly, they found that the cost of the meals was associated with higher contents of energy, fat, saturated fat, protein, and fiber, and not to healthier ingredients. Kanzler et al. (Reference Kanzler, Manschein, Lammer and Wagner2015) found similar results to those in Remnant and Adams (Reference Remnant and Adams2015); in that ready meals were nutritionally imbalanced, being high in fat content and low in carbohydrate levels, with protein content being above dietary recommendations. We extend the previous literature by analyzing the effects of nutritional content, specifically including those ingredients that have a negative health connotation, but that guarantee an appealable flavor on households’ demand for ready-to-heat convenience meals sold at grocery stores in the United States.

Data

This study uses the IRI InfoScan retail scanner data. IRI has agreements with retail outlets across the United States, to provide weekly retail sales data including prices and quantities for products with a Universal Product Code (UPC) and perishable products or random weights. Specifically, the data fields include the following: UPC, store ID for store-level or geography key for retailer marketing area, week, number of units sold, and total revenue in dollars and cents. The retail outlets included in the InfoScan data set include grocery stores (>33,000 stores), drug stores (both chain and independent with >42,000 stores), convenience stores with scanning capacity (chain and independent with > 150,000 stores), mass merchandisers, supercenters, traditional neighborhood markets, club stores, dollar stores, defense commissary stores, and exchanges (Muth et al. Reference Muth, Sweitzer, Brown, Capogrossi, Karns, Levin, Okrent, Siegel and Zhen2016).

In this study, the InfoScan data are linked to product attributes such as nutrition facts, brands, flavor, meal preparation time, product description, and net weight using the UPC. IRI obtains the scanned image of the nutrition fact label and then codes the information from the package adding it to the database. An example of a nutrition fact label is presented in Figure 1. Note that in some cases, the nutrition data are not complete. IRI codes nutrition data for products with significant sales volume, as the intention is to cover a large portion of the sales and not a large portion of UPCs (Muth et al. Reference Muth, Sweitzer, Brown, Capogrossi, Karns, Levin, Okrent, Siegel and Zhen2016).

Figure 1. Nutrition fact label for pepperoni pizza.

The nutrition information available for ready-to-heat meals includes the macronutrients sugar content, calories, total fat, cholesterol, fiber, and sodium. The reason for containing sugar and fiber rather than carbohydrates is to prevent perfect collinearity with the variable calories in the regression, which is an indicator of total energy. We acknowledge that sugar and fiber are listed under the carbohydrates in the nutritional label and that these two components are not the only source of carbohydrates. For fats, we also acknowledge that there are different types of fats (i.e., trans fats, monounsaturated and polyunsaturated fats), and each of them have different impacts on consumers’ health. As explained in the preceding paragraph, not all the information in the nutritional label is available for all UPC products, and the nutrition variables included in the study are the ones that are consistently present in the data set, for most ready-to-heat meals. This study does not include micronutrients among the variables used, because the amounts in which micronutrients are present in ready-to-heat meals is negligible.

About the units, the nutrient information is presented on a per-serving-size basis, and we convert these observations to a per ounce unit. The preparation time is available in the data set in minutes.

These data were collected between 2008 and 2017 across all 50 states (plus Washington DC and Puerto Rico) in the country.

Table 1 describes the data used in this study, that is, twenty ready-to-heat meal products with the largest market shares in the entire sample. Also, for each product, the table includes the meal preparation time in minutes, net weight in ounces, and nutritional content including sugar, calories, total fat, cholesterol, fiber, and sodium. The products include pasta, salads, side dishes, and pizza. We found enough variability in terms of the different attributes included, for example time preparation ranges from 2 to 10 minutes, net weight from 4.3 to 24 oz, sugar content from 0.12 to 2.67 g/oz, calories from 22.17 to 80 per oz, total fat 0.10 to 3.90 g/oz, cholesterol 1.33 to 25.80 mg/oz, fiber 0.14 to 1.26 g/oz, and sodium content 72.09 to 326.06 mg/oz.

Table 1. Summary of characteristics for each ready-to-heat meal

Source: InfoScan data, IRI.

Table 2 reports the average price in cents per ounce, the standard deviation of the prices, and the average market share of each product in the sample. The prices range from 12.69 to 38.89 cent/oz; the standard deviation for the product bundle prices ranges from 1.53 (pepperoni pizza) to 4.06 cent/oz (salad and pasta box); the average market share ranges from 0.60% (pepperoni pizza) to 2.94% (salad and pasta box). In sum, the products used in this study represent 34% of all ready-to-heat meal sales in the data set.

Table 2. Market share and average prices for each ready-to-heat meal

Source: InfoScan data, IRI.

The observations on the average price and total sale percentage (market share) of each product are included for 52 markets (i.e., each state in the United States plus DC and Puerto Rico) and 522 weeks (i.e., 10 years). In total, the regression sample includes a total of 542,880 observations for 20 ready-to-heat meal products most frequently bought with the largest market shares during 2008–2017 in the IRI grocery scanner data set.

This study uses the InfoScan data set for the empirical modeling and does not use the household-based scanner data, mainly because the ready-to-heat meals are not purchased on a frequent basis by a critical mass of households. Thus, there are insufficient observations to provide a stable market share for each time-market combination. Nonetheless, to provide complete information, this study includes a summary of the household-based scanner data set, which is different from the InfoScan data set, to compare the sociodemographic characteristics between households who purchase ready-to-heat meals, at least once during the period of analysis, and those households in the entire data set. The description of the household-based scanner data set is presented in Table 3. One observes that those who purchase ready-to-heat meals exhibit a larger percentage of white, higher educated individuals, are less likely to have both male and female household heads compared to the entire sample, have smaller households in terms of number of individuals, and report higher annual incomes.

Table 3. Description of household sociodemographic characteristics

Source: IRI household scanner data.

Empirical method

This study applies the BLP random coefficients logit model (Berry, Levinsohn, and Pakes Reference Berry, Levinsohn and Pakes1995; Nevo Reference Nevo2001; Zhang and Palma Reference Zhang and Palma2021) to estimate the demand for ready-to-heat meals. Consumer i’s utility of consuming product j on period t is given by,

(1) $${U_{ijt}} = {\alpha _i}\left( {{y_i} - {p_{jt}}} \right) + {\boldsymbol{x_{jt}}}{\boldsymbol{\beta _i}} + {\xi _{jt}} + {\varepsilon _{ijt}}$$

where ${y_i}$ is consumer i’s income, ${p_{jt}}$ is the observed price of product j in time-market combinationFootnote 2 t. ${x_{jt}}$ , is a 1 $\times$ K dimensional vector and depicts the attributes of product j and includes the convenience variable expressed as preparation time and the nutrition variables: sugar content, calories, total fat, cholesterol, fiber, and sodium content. ${\alpha _i}$ is the consumer i’s marginal utility of income, ${\boldsymbol{\beta _i}}$ is a K $\times$ 1 dimensional vector and represents the consumer i’s marginal utility of product attributes, ${\xi _{jt}}$ captures the unobserved product-specific shock in each market, and ${\varepsilon _{ijt}}$ is the error term.

Equation 1 assumes both ${\alpha _i}$ and ${\beta _i}$ have a constant and a random component. Randomness stems from standard normal distributions, which are used to represent the heterogeneity of parameters. The parameters are composed by a mean and a variance-covariance matrix, following,

(2) $$\left[ {\matrix{ {{\alpha _i}} \cr {{\beta _i}} \cr } } \right] = \left[ {\matrix{ \alpha \cr \beta \cr } } \right] + {\boldsymbol{v_i}},\;{\boldsymbol{v_i}} \sim {P_v}\left( v \right)$$

where ${\boldsymbol{v_i}}$ is the K by 1 dimensional vector of taste parameters for consumer i. The distribution of ${\boldsymbol{v_i}}$ is denoted by ${P_v}\left( v \right)$ .

${\boldsymbol{x_{jt}}}\;$ denotes the attributes capturing heterogeneity and has two parts coefficients: random ${\boldsymbol{v_i}}$ and non-random ${\boldsymbol{\beta _0}}$ ; in other words, ${\boldsymbol{\beta _i}}$ consists of two vectors: ${\boldsymbol{\beta _0}}$ and ${\boldsymbol{v_i}}$ , which yields,

(3) \begin{equation}\matrix{ {{u_{ijt}}} & = \,\, {{\alpha _i}\left( {{y_i} - {p_{jt}}} \right) + {{\boldsymbol{x}}_{{\boldsymbol{jt}}}}{{\boldsymbol{\beta }}_{\boldsymbol{i}}} + {\xi _{jt}} + {\varepsilon _{ijt}}} \hfill \cr {} \,\,\,\,\,\,\,\,\, & = \,\, {{\alpha _i}{y_i} - {\alpha _i}{p_{jt}} + {{\boldsymbol{x}}_{{\boldsymbol{jt}}}}{{\boldsymbol{\beta }}_{\boldsymbol{0}}} + {{\boldsymbol{x}}_{{\boldsymbol{jt}}}}{{\boldsymbol{v}}_{\boldsymbol{i}}} + {\xi _{jt}} + {\varepsilon _{ijt}}} \hfill \cr {} \,\,\,\,\,\,\,\,\, & = \,\, {{\alpha _i}{y_i} + \left( { - {\alpha _0}{p_{jt}} + {{\boldsymbol{x}}_{{\boldsymbol{jt}}}}{{\boldsymbol{\beta }}_{\boldsymbol{0}}} + {\xi _{jt}}} \right) + {{\boldsymbol{x}}_{{\boldsymbol{jt}}}}{{\boldsymbol{v}}_{\boldsymbol{i}}} + {\varepsilon _{ijt}}} \hfill \cr } \end{equation}

The expression above is composed of the utility from income, the mean utility from the product attributes, consumer heterogeneity, and the independently and identically distributed (iid) error term. The mean utility from the product attributes and consumer heterogeneity is defined by,

(4) $${\delta _{jt}} \equiv - {\alpha _0}{p_{jt}} + {\boldsymbol{x_{jt}}}{\boldsymbol{\beta _0}} + {\xi _{jt}}$$
(5) $${\mu _{ijt}} \equiv {\boldsymbol{x_{jt}}}{\boldsymbol{v_i}}$$

Then, the utility function can be expressed as,

(6) $${u_{ijt}} = {\alpha _i}{y_i} + {\delta _{jt}} + {\mu _{ijt}} + {\varepsilon _{ijt}}$$

where ${\delta _{jt}}$ is the mean utility from a consumer’s choice of product $j$ that is homogeneous across all consumers, ${\mu _{ijt}}$ is the heteroskedastic disturbance term that shows consumer heterogeneity, and ${\varepsilon _{ijt}}$ is the homoscedastic iid error term.

Each consumer purchases one product unit at a time that gives the highest utility compared to all others, including the outside product. Conditional on the product attributes $\left( {\boldsymbol{x,\;\xi}} \right)$ and market prices $p$ , a consumer i chooses product $j$ if,

(7) $${u_{ijt}} \ge {u_{ikt}}{\rm{\;for\;all\;}}j,k \in \left\{ {0,,1,2, \ldots ,{\rm{J}}} \right\}$$

Further, if ${q_{jt}}$ represents the quantity of the product $j$ sold in market $t$ , then the observed probability of a consumer i choosing the product $j$ over other products is given by,

(8) \begin{align} {\rm{Pr}}\left( {{u_{ijt}} \gt {u_{ikt}}} \right) & = {\rm{Pr}}\left( {{\alpha _i}{y_i} + {\delta _{ijt}} + {\mu _{ijt}} + {\varepsilon _{ijt}} \gt {\alpha _i}{y_i} + {\delta _{ikt}} + {\mu _{ikt}} + {\varepsilon _{ikt}}} \right)\\ & = {\rm{Pr}}\left( {{\varepsilon _{ikt}} - {\varepsilon _{ijt}} \lt {\delta _{ijt}} - {\delta _{ikt}} + {\mu _{ijt}} - {\mu _{ikt}}} \right)\\ & \matrix{{= \mathop \int \nolimits_\varepsilon I\left( {{\delta _{ijt}} - {\delta _{ikt}} + {\mu _{ijt}} - {\mu _{ikt}}} \right)f\left( {\varepsilon |{v_i}} \right)d\varepsilon \;} \cr { = {s_{ijt}}\;\;\;\;\forall \;j \ne k\# } \cr } \end{align}

Equation 8 is integrated over the density of unobserved preference to obtain the theoretical share of product $j$ in market $t$ , resulting in Equation 9,

(9) $$\matrix{ {{s_{jt}}\left( {p,\boldsymbol{x}} \right) = \mathop \int \nolimits_\nu {s_{ijt}}dP_v^*\left( v \right)\# \;} \cr } $$

The study uses the STATA BLP package to analytically estimate the coefficients using Monte Carlo integration. The package uses 200 draws for the Monte Carlo simulation, the tolerance level used to define the convergence of the contraction mapping algorithm is 10e-15, and the starting value for the standard deviations of the random coefficients is 0.5 (Vincent Reference Vincent2015). Considering that price is endogenous to the market share, this study uses as an instrumental variable, the average price of the same product in other marketsFootnote 3 (Hausman Reference Hausman, Bresnahan and Gordon1996). The instrument was tested, and results of the first-stage F-test larger showed this was not a weak instrumental variable (Nevo Reference Nevo2001).

To capture the effect of convenience, expressed in terms of preparation time, and nutritional content, as the demand for ready-to-heat meals, product j is depicted by 20 ready-to-heat meal products j (j = 1,2…,20). The time-market combinationFootnote 4 (t) includes 50 states plus Washington DC and Puerto Rico, over 522 weeks (from 2008 to 2017 or 10 years): t = 1, 2, …, 27144. We include the net weight of each ready meal to control for different weights per package that could result in different prices per unit as control variables. The net weight is an important control variable for two reasons, as discussed by Cohen (Reference Cohen2008). First, with respect to sales strategy, large packages could be used for the strategy bundling selling for price discrimination. Second, the net weight of a product is related to the packaging cost (although it is not a large cost). Thus, weights per package could result in different prices per unit.

We also include binary primary ingredient indicators to control product heterogeneity: pizza, pasta, potato, and salad. For example, the binary variable pizza equals one if the observation is a pizza product, zero otherwise. This information is given by the data set. State fixed effect (FE) and week FE variables are also included to control for state heterogeneity and time seasonality. That is, these variables control variations over place (states within the United States) and time. For example, households might have greater supply of salads in lower latitude states such as California or Florida, compared to states such as Minnesota. Also, there might be a larger supply of salads during the summer season weeks. A White test for heteroscedasticity shows evidence of heteroscedastic error terms. Therefore, the model uses the robust standard error to control for heteroscedasticity, given that the time and geographic range is broad (White Reference White1980; Vincent Reference Vincent2015).We also apply the variance inflation factor (VIF) method to test for multicollinearity. Results indicate no multicollinearity (VIF > 10) in the set of independent variables included in the model. Further, when presenting the results, we include the proportion of households who have a positive (negative) marginal utility parameter for each nutritional attributes. Because we assume a normal distribution for the marginal utility parameters, and we can observe the mean and the standard deviation for each marginal utility parameters, we calculate the share of households with a positive/negative marginal utility for a given nutritional variable.

A limitation of this approach is that when using grocery store scanner data, the researcher observes choices, or households’ actual purchases, leaving out the opt-outs. That is, the researcher does not observe the entire choice setting, as this information is not available in the data set. This study offers one mitigation strategy. Because not all the 20 convenience food options were available to every household in every time-market combination, this study uses the national average price for the ready-to-heat meal, when it was not available in a specific time-market combination. This caveat is discussed in Nevo (Reference Nevo2001), who argues that not having the entire choice set results in an overestimated unobservable taste heterogeneity. For future research, we hope for improvements in the data collection, by including observations of those products not purchased or the entire choice set faced by households.

Results

Table 4 presents the parameter estimates for the BLP model, including the negative utility share.Footnote 5 The mean coefficient estimates are presented in column 2, and the coefficients for taste heterogeneity by means of random draws from known distributions are presented in column 3. The table also reports the first-stage regression F-value (equal to 131.47), implying that the instrumental variables used are strong.

Table 4. Parameter estimates for the Berry-Levisohn-Pakes Demand Model for ready-to-heat meals

1 Single, double, and triple asterisks (*,**,***) indicate [statistical] significance at the 10%, 5%, and 1% level, respectively.

2 Standard errors between parentheses.

3 Instead of including each binary variable for state (52) and week (522), for ease of presentation, we mention that these variables were included.

The mean marginal utility of income was negative and statistically significant, indicating the negative effect of price on the utility derived from consuming ready-to-heat meals. In relation to the convenience attributes, the mean marginal utility of preparation time is negative and statistically significant, implying that longer preparation times are detrimental to the utility derived from consuming these meals. The proportion of households that have a negative marginal utility for preparation time is 99.91%. This is aligned with previous literature that the main driver of ready meal consumption is the time savings from the meal preparation time (Verlegh and Candel Reference Verlegh and Candel1999; De Boer et al. Reference De Boer, McCarthy, Cowan and Ryan2004; Harris and Shiptsova Reference Harris and Shiptsova2007; Okrent and Kumcu Reference Okrent and Kumcu2016).

In relation to nutritional attributes, sugar, total fat, sodium, cholesterol, and fiber exhibit a positive mean marginal utility; that is, household’s utility increases with higher contents of the previously mentioned attributes. Additionally, 74.49% (100–25.51) of households display a positive marginal utility for sugar, 90.78% display a positive marginal utility for total fat, 74.75% display a positive marginal utility for sodium, 69.57% display a positive marginal utility for cholesterol, and 78.81% display a positive marginal utility for fiber. These results imply that, except for fiber content, households in this data set prefer convenience products with higher content of ingredients contributing to taste that could be detrimental to health if overconsumed. This finding coincides with Malone and Lusk (Reference Malone and Lusk2017) who concluded that consumers derive the most utility out of how they perceive a product’s taste, rather than how healthy or safe they believe the product to be. These results are also aligned with the claims of Remnant and Adams (Reference Remnant and Adams2015), Kanzler et al. (Reference Kanzler, Manschein, Lammer and Wagner2015) and Okrent and Kumcu (Reference Okrent and Kumcu2016); in that increased consumption of processed convenience foods is the primary driver of increased sugar, fat, and sodium intake.

Calorie content is the only variable in the model with a negative sign for the marginal utility. Also, 30.85% of the households in the data set derive a negative marginal utility. Considering that proteins, carbohydrates, and fat contribute to the calorie content, it is possible that the combination of these elements altogether implies a negative effect on the demand for ready-to-heat meals and that fat content alone would imply a positive effect, as fat content is more related to flavor.

On the control variables, net weight exhibits a negative marginal utility, indicating that larger sizes of ready-to-heat meals imply less prices per oz. The mean marginal utility for pizza and salad is positive, whereas the mean marginal utility for pasta and potato is negative.

Conclusions

This study analyzes consumers’ preferences for nutrition and convenience attributes in ready-to-heat meals. We used InfoScan IRI scanner data for 50 states in the United States, plus Washington DC and Puerto Rico, for the period 2008–2017. This study applies a BLP model to estimate the marginal utility derived from nutritional (expressed in terms of sugar, calories, total fat, cholesterol, fiber, and sodium content) and convenience attributes (expressed in terms of meal preparation time).

Households whose purchases have been recorded in InfoScan prefer shorter meal preparation times, emphasizing the notion that households’ preferences for these convenience foods stem on saving time. For nutritional content, results indicate that households prefer convenience meals with higher contents of sugar, fat, sodium, cholesterol, and fiber. These results confirm the claims that the consumption of processed convenience foods implies a high intake of sugar, fat, sodium, and cholesterol components in the diet, which denotes a negative consequence on dietary quality and health. Because demand for convenience foods is likely to remain or increase at least for a population segment, it is important to consider alternative measures to prevent the production of processed foods high in unhealthy components. The findings in this study signals that the unhealthy ingredients with the highest marginal values are those that are added to ensure flavor and palatability. Reducing the amount of unhealthy ingredients in processed foods is challenging with current food processing technologies, such as sterilization in retort, because they damage aromatic and flavor components naturally present in the food, making it necessary to add extra quantities of salt and sugar to ensure palatable flavor. Therefore, to improve the nutrition quality of convenience foods, it is important to advance the development and adoption of new food processing technologies that would preserve the natural flavor and aromatic components of the ingredients and reduce the need to add unhealthy ingredients to processed convenient foods.

Data availability statement

Data were obtained via a third-party agreement with the United States Department of Agriculture and NORC (National Opinion Research Center) at the University of Chicago.

Acknowledgements

We would like to acknowledge the recommendations of anonymous reviewers to improve this study. Access to proprietary IRI data was obtained via a Third-Party Agreement in collaboration with USDA researchers. The analysis, findings, and conclusions expressed in this report should not be attributed to IRI.

Funding statement

This study was supported by the United States Department of Agriculture, National Institute of Food and Agriculture, Agriculture and Food Research Initiative project (Grant No.: 2016-68003-28840).

Conflicts of interest

The authors declare no conflicts of interest.

Footnotes

1 We ought to include the generic composition of the macronutrients (i.e., protein, carbohydrates, and fat), calorie count (carbohydrates provide 4 calories per gram, proteins provide 4 calories per gram, and fat provides 9 calories per gram), and micronutrients (e.g., vitamins, iron). We encounter two problems. First, the data set as we have it does not contain observations on protein and micronutrient content for the ready-to-heat meals included in this study. Second, when including carbohydrates, we encounter perfect multicollinearity; therefore, we include sugar instead. The variables included have passed the test for the variance inflation factor and multicollinearity.

2 The time-market combination is a combination of indicator variables for time and state. And if a product was not presented in a time-market combination, the study used the national average price instead.

3 As mentioned in Dubois et al. (Reference Dubois, Griffith and Nevo2014), the combination of ${\xi _{jt}} + {\mu _{ijt}} + {\varepsilon _{ijt}}$ depicts elements of preferences and the environment. For example, preferences for different ready meals could vary across households depicted by ${\mu _{ijt}}$ . ${\xi _{jt}}$ and ${\varepsilon _{ijt}}$ would capture other elements of preferences. It is possible that ${\varepsilon _{ijt}}$ includes unobserved characteristics of the goods that will likely impact the choice of quantities raising the concern about endogeneity of nutrient content. Therefore, Dubois et al. (Reference Dubois, Griffith and Nevo2014) use instrumental variables for nutrient content. However, Dubois et al. (Reference Dubois, Griffith and Nevo2014) explain that the use of instrumental variables for nutrient content is challenging because researchers can only observe the products that are actually purchased by some households in the data. We do not see the complete set of available products. The strategy is to “approximate the nutrients of products available to each household by computing the unweighted average nutrient content of products purchased, in that category and quarter, by household in a reference group.” They are able to identify a reference group for each household by category and then compute the average nutrient content of products bought by members of the reference group and assume this is the average nutritional content of the products in the household’s choice set. We claim that the Dubois et al. (Reference Dubois, Griffith and Nevo2014) approach to address this issue is feasible because the set of products included in their study is by far more comprehensive, and they have enough variability across reference households. This approach might not be feasible to apply to our case, because our data set of interest is only limited to a set of ready-to-heat meals. Therefore, we limit the use of instrumental variables to prices, as is the approach used in the seminal papers by Berry, Levinsohn, and Pakes (Reference Berry, Levinsohn and Pakes1995) and Nevo (Reference Nevo2001).

4 These data ordered as 1-522 coincide with the first state 522-week periods, 523-1,044 for the second state, etc. And the 52 jurisdictions are listed in alphabetical order.

5 The study assumed a normal distribution for the marginal utility parameters and thus has the cumulative distribution function of the parameter estimates, given that the mean and standard deviation of the marginal utility parameters are given by the STATA output, the table includes the share of participants that have a positive (negative) marginal utility for the nutrition variables and the mean preparation time.

References

Amani, P., and Gadde, L.E.. 2015. “Shelf Life Extension and Food Waste Reduction. International European Forum on System Dynamics and Innovation in Food Networks.” Paper Presented at the 144th European Association of Agricultural Economics Seminar, Innsbruck, Austria, February 9–13.Google Scholar
Barnett, S.M., Sablani, S.S., Tang, J., and Ross, C.F.. 2019. “Utilizing Herbs and Microwave Assisted Thermal Sterilization to Enhance Saltiness Perception in a Chicken Pasta Meal.” Journal of Food Science 84(8): 23132324. doi: 10.1111/1750-3841.14736.CrossRefGoogle Scholar
Barnett, S.M., Sablani, S.S, Tang, J., and Ross, C.F.. 2020. “The Potential for Microwave Technology and the Ideal Profile Method to Aid in Salt Reduction.” Journal of Food Science 85(3): 600610. doi: 10.1111/1750-3841.15034.CrossRefGoogle ScholarPubMed
Berry, S., Levinsohn, J., and Pakes, A.. 1995. “Automobile Prices in Market Equilibrium.” Econometrica 63(4): 841890. doi: 10.2307/2171802.CrossRefGoogle Scholar
Binkley, J.K. 2006. “The Effect of Demographic, Economic, and Nutrition Factors on the Frequency of Food Away from Home.” Journal of Consumer Affairs 40(2): 372391. doi: 10.1111/j.1745-6606.2006.00062.x.CrossRefGoogle Scholar
Burton, S., Howlett, E., and Tangari, A.H.. 2009. “Food for Thought: How Will the Nutrition Labeling of Quick Service Restaurant Menu Items Influence Consumers’ Product Evaluations, Purchase Intentions, and Choices?Journal of Retailing 85(3): 258273. doi: 10.1016/j.jretai.2009.04.007.CrossRefGoogle Scholar
Capps, O., Tedford, J.R., and Havlicek, J.. 1985. “Household Demand for Convenience and Non-Convenience Foods.” American Journal of Agricultural Economics 67(4): 862869. doi: 10.2307/1241827.CrossRefGoogle Scholar
Cavaliere, A., and Ventura, V.. 2018. “Mismatch between Food Sustainability and Consumer Acceptance toward Innovation Technologies among Millennial Students: The Case of Shelf Life Extension.” Journal of Cleaner Production 175(1): 641650. doi: 10.1016/j.jclepro.2017.12.087.CrossRefGoogle Scholar
Cohen, A. 2008. “Package Size and Price Discrimination in the Paper Towel Market.” International Journal of Industrial Organization 26(2): 502516. doi: 10.1016/j.ijindorg.2006.01.004.CrossRefGoogle Scholar
Cook, N.R., Cutler, J.A., Obarzanek, E., Buring, J.E., Rexrode, K.M., Kumanyika, S.K., and Whelton, P.K.. 2007. “Long Term Effects of Dietary Sodium Reduction on Cardiovascular Disease Outcomes: Observational Follow-up of the Trials of Hypertension Prevention (TOPH).” British Medical Journal 334(7599): 885885. doi: 10.1136/bmj.39147.604896.55.CrossRefGoogle Scholar
Costa, A.I.A., Dekker, M., Beumer, R.R., Rombouts, F.M., and Jongen, W.M.F.. 2001. “A Consumer-Oriented Classification System for Home Meal Replacements.” Food Quality and Preference 12: 229242. doi: 10.1016/S0950-3293(01)00010-6.CrossRefGoogle Scholar
De Boer, M., McCarthy, M., Cowan, C., and Ryan, I.. 2004. “The Influence of Lifestyle Characteristics and Beliefs about Convenience Food on the Demand for Convenience Foods in the Irish Market.” Food Quality and Preference 15(2): 155165. doi: 10.1016/S0950-3293(03)00054-5.CrossRefGoogle Scholar
Dubois, P., Griffith, R., and Nevo, A.. 2014. “Do Prices and Attributes Explain International Differences in Food Purchases?American Economic Review 104(3): 832867. doi: 10.1257/aer.104.3.832.CrossRefGoogle Scholar
Funk, C., and Kennedy, B.. 2016. The New Food Fights: U.S. Public Divides Over Food Science. Pew Research Center. Available at https://www.pewresearch.org/science/2016/12/01/the-new-food-fights/ (accessed May 20, 2020).Google Scholar
Geeroms, N., Verbeke, W., and Van Kenhove, P.. 2008. “Consumers’ Health-Related Motive Orientations and Ready Meal Consumption Behaviour.” Appetite 51(3): 704712. doi: 10.1016/j.appet.2008.06.011.CrossRefGoogle ScholarPubMed
Ginon, E., Lohéac, Y., Martin, C., Combris, P., and Issanchou, S.. 2009. “Effect of Fibre Information on Consumer Willingness to Pay for French Baguettes.” Food Quality and Preference 20(5): 343352. doi: 10.1016/j.foodqual.2009.01.002.CrossRefGoogle Scholar
Harris, J.M., and Shiptsova, R.. 2007. “Consumer Demand for Convenience Foods: Demographics and Expenditures.” Journal of Food Distribution Research 38(3): 2236. doi: 10.22004/ag.econ.46585.Google Scholar
Hausman, J.A. 1996. “Valuation of New Goods Under Perfect and Imperfect Competition.” In The Economics of New Goods, Bresnahan, T.F., and Gordon, R.J., eds., 207248. Chicago, Illinois, USA: University of Chicago Press.Google Scholar
Jabs, J., and Devine, C.M.. 2006. “Time Scarcity and Food Choices: An Overview.” Appetite 47(2): 196204. doi: 10.1016/j.appet.2006.02.014.CrossRefGoogle ScholarPubMed
Kanzler, S., Manschein, M., Lammer, G., and Wagner, K.H.. 2015. “The Nutrient Composition of European Ready Meals: Protein, Fat, Total Carbohydrates and Energy.” Food Chemistry 172(April): 190196. doi: 10.1016/j.foodchem.2014.09.075.CrossRefGoogle ScholarPubMed
Li, J., Jaenicke, E.C., Anekwe, T.D., and Bonanno, A.. 2018. “Demand for Ready-to-Eat Cereals with Household-Level Censored Purchase Data and Nutrition Label Information: A Distance Metric Approach.” Agribusiness 34(4): 687713. doi: 10.1002/agr.21561.CrossRefGoogle Scholar
Malone, T., and Lusk, J.L.. 2017. “Taste Trumps Health and Safety: Incorporating Consumer Perceptions into a Discrete Choice Experiment for Meat.” Journal of Agricultural and Applied Economics 49(1): 139157. doi: 10.1017/aae.2016.33.CrossRefGoogle Scholar
Muth, M.K., Sweitzer, M., Brown, D., Capogrossi, K., Karns, S.A., Levin, D., Okrent, A., Siegel, P., and Zhen, C.. 2016. Understanding IRI Household-Based and Store-Based Scanner Data. Technical Bulletin TB 1942. ERS, U.S. Department of Agriculture, Washington, DC.Google Scholar
Nevo, A. 2001. “Measuring Market Power in the Ready-to-Eat Cereal Industry.” Econometrica 69(2): 307342.CrossRefGoogle Scholar
Okrent, A.M., and Kumcu, A.. 2016. U.S. Households’ Demand for Convenience Foods. Economic Information Bulletin 211. ERS, USDA. doi: 10.22004/ag.econ.262195.Google Scholar
Remnant, J., and Adams, J.. 2015. “The Nutritional Content and Cost of Supermarket Ready-Meals. Cross-sectional Analysis.” Appetite 92(September): 3642. doi: 10.1016%2Fj.appet.2015.04.069.CrossRefGoogle ScholarPubMed
Scholderer, J., and Grunert, K.G.. 2005. “Consumers, Food and Convenience: The Long Way from Resource Constraints to Actual Consumption Patterns.” Journal of Economic Psychology 26(1): 105128. doi: 10.1016/j.joep.2002.08.001.CrossRefGoogle Scholar
Scholliers, P. 2015. “Convenience Foods. What, Why, and When.” Appetite 94(1): 26. doi: 10.1016/j.appet.2015.02.017.CrossRefGoogle ScholarPubMed
Tang, J. 2015. “Unlocking Potentials of Microwaves for Food Safety and Quality.” Journal of Food Science 80, 17761793. doi: 10.1111/1750-3841.12959 CrossRefGoogle ScholarPubMed
Verlegh, P.W.J., and Candel, M.J.J.M.. 1999. “The Consumption of Convenience Foods: Reference Groups and Eating Situations.” Food Quality and Preference 10(6): 457464. doi: 10.1016/S0950-3293(99)00042-7.CrossRefGoogle Scholar
Vincent, D.W. 2015. “The Berry–Levinsohn–Pakes Estimator of the Random-Coefficients Logit Demand Model.” The Stata Journal 15(3): 854880.CrossRefGoogle Scholar
White, H. 1980. “A Heteroskedasticity-Consistent Co variance Matrix Estimator and a Direct Test for Heteroskedasticity.” Econometrica 44(4): 817838.CrossRefGoogle Scholar
Zhang, Q., and Gallardo, R.K.. 2018. “Willingness and Purchase Decision on Ready-to-eat Meals.” Selected Paper Presented at the 2018 Agricultural & Applied Economics Association Annual Meeting, Washington, DC, August 5–7.Google Scholar
Zhang, Y., and Palma, M.A.. 2021. “Revisiting Sugar Taxes and Sugary Drink Consumption: Evidence from the Random-Coefficient Demand Model.” Journal of Agricultural and Resource Economics 46(1): 3755. doi: 10.22004/ag.econ.303601.Google Scholar
Figure 0

Figure 1. Nutrition fact label for pepperoni pizza.

Figure 1

Table 1. Summary of characteristics for each ready-to-heat meal

Figure 2

Table 2. Market share and average prices for each ready-to-heat meal

Figure 3

Table 3. Description of household sociodemographic characteristics

Figure 4

Table 4. Parameter estimates for the Berry-Levisohn-Pakes Demand Model for ready-to-heat meals