The Effect of Response Conditions on Food Images-Evoked Emotions Measured Using the Valence × Arousal Circumplex-Inspired Emotion Questionnaire (CEQ)
Abstract
:1. Introduction
2. Study 1—Comparison between Single and Multiple Response Conditions with Respect to Food Image-Evoked Emotions Rated within One Session in the Within-Participants Design
2.1. Materials and Methods
2.1.1. Participants
2.1.2. Food Images
2.1.3. Procedure
2.1.4. Data Analysis
2.2. Results and Discussion
2.2.1. Mean Frequency of Citations per Food Image Sample for Each Pair of Emotion Terms
2.2.2. Discriminability between Food Image Samples for Each Pair of Emotion Terms
2.2.3. Associations between Food Image Samples and Pairs of Emotion Terms
2.2.4. Similarities to the Configurations of Valence and Arousal Dimensions in Response to Food Image Samples
3. Study 2—Comparison between Single and Multiple Response Conditions with Respect to Food Image-Evoked Emotions Rated over Separated Sessions of the Within-Participants Design
3.1. Materials and Methods
3.1.1. Participants
3.1.2. Food Images
3.1.3. Procedure
3.1.4. Data Analysis
3.2. Results and Discussion
3.2.1. Mean Frequency of Citations per Food Image Sample for Each Pair of Emotion Terms
3.2.2. Discriminability between Food Image Samples for Each Pair of Emotion Terms
3.2.3. Associations between Food Image Samples and Pairs of Emotion Terms
3.2.4. Similarities to the Configurations of Valence and Arousal Dimensions in Response to Food Image Samples
4. General Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Reference | Study | CEQ Variant 1 | Sample Type | Sample Module | Test Type | Test Place | Experimental Design | No. of Participants |
---|---|---|---|---|---|---|---|---|
Jaeger et al. [38] | 1 | C and S vs. C and M vs. L and S vs. L and M | 15 foods | Written names | Remote | New Zealand | Between-participants | 160 vs. 160 vs. 160 vs. 160 |
Jaeger et al. [39] | 1 | C and S vs. L and M | 9 fruits | Tasted | On site | New Zealand | Between-participants | 91 vs. 94 |
2 | C and S vs. L and M | 9 candies | Tasted | On site | New Zealand | Between-participants | 91 vs. 94 | |
3 | C and S vs. L and M | 5 kiwifruits | Written concepts | Remote | UK | Between-participants | 209 vs. 210 | |
4 | C and S vs. C and M | 17 foods | Written names | Remote | USA | Between-participants | 628 vs. 625 | |
The present study | 1 | S vs. M | 14 foods | Pictures | Remote | Republic of Korea | Within-participants | 105 |
2 | S vs. M | 14 foods | Pictures | On site | USA | Within-participants | 64 |
Study No. | Category | RV Coefficient | p-Value |
---|---|---|---|
Study 1 | Food image samples | 0.97 | <0.001 |
Pairs of emotion terms | 0.96 | <0.001 | |
Study 2 | Food image samples | 0.95 | <0.001 |
Pairs of emotion terms | 0.88 | <0.001 |
Study No. | Response Condition | RV Coefficient | p-Value |
---|---|---|---|
Study 1 | Single response | 0.92 | <0.001 |
Multiple response | 0.96 | <0.001 | |
Study 2 | Single response | 0.75 | <0.001 |
Multiple response | 0.84 | <0.001 |
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Seo, H.-S.; Rockers, L.; Kim, Y.-G. The Effect of Response Conditions on Food Images-Evoked Emotions Measured Using the Valence × Arousal Circumplex-Inspired Emotion Questionnaire (CEQ). Foods 2023, 12, 2250. https://doi.org/10.3390/foods12112250
Seo H-S, Rockers L, Kim Y-G. The Effect of Response Conditions on Food Images-Evoked Emotions Measured Using the Valence × Arousal Circumplex-Inspired Emotion Questionnaire (CEQ). Foods. 2023; 12(11):2250. https://doi.org/10.3390/foods12112250
Chicago/Turabian StyleSeo, Han-Seok, Lydia Rockers, and Young-Gab Kim. 2023. "The Effect of Response Conditions on Food Images-Evoked Emotions Measured Using the Valence × Arousal Circumplex-Inspired Emotion Questionnaire (CEQ)" Foods 12, no. 11: 2250. https://doi.org/10.3390/foods12112250
APA StyleSeo, H. -S., Rockers, L., & Kim, Y. -G. (2023). The Effect of Response Conditions on Food Images-Evoked Emotions Measured Using the Valence × Arousal Circumplex-Inspired Emotion Questionnaire (CEQ). Foods, 12(11), 2250. https://doi.org/10.3390/foods12112250