Decoding Global Palates: Unveiling Cross-Cultural Flavor Preferences Through Online Recipes
Navigating cross-cultural food choices is complex, influenced by cultural nuances and various factors, with flavor playing a crucial role. Understanding cultural flavor preferences helps individuals make informed food choices in cross-cultural contexts. We examined flavor differences across China, t...
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MDPI AG
2025-04-01
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| Series: | Foods |
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| author | Qing Zhang David Elsweiler Christoph Trattner |
| author_facet | Qing Zhang David Elsweiler Christoph Trattner |
| author_sort | Qing Zhang |
| collection | DOAJ |
| description | Navigating cross-cultural food choices is complex, influenced by cultural nuances and various factors, with flavor playing a crucial role. Understanding cultural flavor preferences helps individuals make informed food choices in cross-cultural contexts. We examined flavor differences across China, the US, and Germany, as well as consistent flavor preference patterns using online recipes from prominent recipe portals. Distinct from applying traditional food pairing theory, we directly mapped ingredients to their individual flavor compounds using an authorized database. This allowed us to analyze cultural flavor preferences at the molecular level and conduct machine learning experiments on 25,000 recipes from each culture to reveal flavor-based distinctions. The classifier, trained on these flavor compounds, achieved 77% accuracy in discriminating recipes by country in a three-class classification task, where random choice would yield 33.3% accuracy. Additionally, using user interaction data on appreciation metrics from each recipe portal (e.g., recipe ratings), we selected the top 10% and bottom 10% of recipes as proxies for appreciated and less appreciated recipes, respectively. Models trained within each portal discriminated between the two groups, reaching a maximum accuracy of 66%, while random selection would result in a baseline accuracy of 50%. We also explored cross-cultural preferences by applying classifiers trained on one culture to recipes from other cultures. While the cross-cultural performance was modest (specifically, a max accuracy of 54% was obtained when predicting food preferences ofthe USusers with models trained on the Chinesedata), the results indicate potential shared flavor patterns, especially between Chinese and US recipes, which show similarities, while German preferences differ. Exploratory analyses further validated these findings: we constructed ingredient networks based on co-occurrence relationships to label recipes as savory or sweet, and clustered the flavor profiles of compounds as sweet or non-sweet. These analyses showed opposing trends in sweet vs. non-sweet/savory appreciation between US and German users, supporting the machine learning results. Although our findings are likely to be influenced by biases in online data sources and the limitations of data-driven methods, they may still highlight meaningful cultural differences and shared flavor preferences. These insights offer potential for developing food recommender systems that cater to cross-cultural contexts. |
| format | Article |
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| institution | DOAJ |
| issn | 2304-8158 |
| language | English |
| publishDate | 2025-04-01 |
| publisher | MDPI AG |
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| series | Foods |
| spelling | doaj-art-2f6e87d3adfa4ca68f0b1ec58ed5881f2025-08-20T03:13:30ZengMDPI AGFoods2304-81582025-04-01148141110.3390/foods14081411Decoding Global Palates: Unveiling Cross-Cultural Flavor Preferences Through Online RecipesQing Zhang0David Elsweiler1Christoph Trattner2School of Information Management, Sun Yat-sen University, Guangzhou 510006, ChinaInstitute for Language, Literature and Culture, University of Regensburg, 93053 Regensburg, GermanyMediaFutures, University of Bergen, 5008 Bergen, NorwayNavigating cross-cultural food choices is complex, influenced by cultural nuances and various factors, with flavor playing a crucial role. Understanding cultural flavor preferences helps individuals make informed food choices in cross-cultural contexts. We examined flavor differences across China, the US, and Germany, as well as consistent flavor preference patterns using online recipes from prominent recipe portals. Distinct from applying traditional food pairing theory, we directly mapped ingredients to their individual flavor compounds using an authorized database. This allowed us to analyze cultural flavor preferences at the molecular level and conduct machine learning experiments on 25,000 recipes from each culture to reveal flavor-based distinctions. The classifier, trained on these flavor compounds, achieved 77% accuracy in discriminating recipes by country in a three-class classification task, where random choice would yield 33.3% accuracy. Additionally, using user interaction data on appreciation metrics from each recipe portal (e.g., recipe ratings), we selected the top 10% and bottom 10% of recipes as proxies for appreciated and less appreciated recipes, respectively. Models trained within each portal discriminated between the two groups, reaching a maximum accuracy of 66%, while random selection would result in a baseline accuracy of 50%. We also explored cross-cultural preferences by applying classifiers trained on one culture to recipes from other cultures. While the cross-cultural performance was modest (specifically, a max accuracy of 54% was obtained when predicting food preferences ofthe USusers with models trained on the Chinesedata), the results indicate potential shared flavor patterns, especially between Chinese and US recipes, which show similarities, while German preferences differ. Exploratory analyses further validated these findings: we constructed ingredient networks based on co-occurrence relationships to label recipes as savory or sweet, and clustered the flavor profiles of compounds as sweet or non-sweet. These analyses showed opposing trends in sweet vs. non-sweet/savory appreciation between US and German users, supporting the machine learning results. Although our findings are likely to be influenced by biases in online data sources and the limitations of data-driven methods, they may still highlight meaningful cultural differences and shared flavor preferences. These insights offer potential for developing food recommender systems that cater to cross-cultural contexts.https://www.mdpi.com/2304-8158/14/8/1411food preferencesflavor compoundsfood culturesfood recommender systems |
| spellingShingle | Qing Zhang David Elsweiler Christoph Trattner Decoding Global Palates: Unveiling Cross-Cultural Flavor Preferences Through Online Recipes Foods food preferences flavor compounds food cultures food recommender systems |
| title | Decoding Global Palates: Unveiling Cross-Cultural Flavor Preferences Through Online Recipes |
| title_full | Decoding Global Palates: Unveiling Cross-Cultural Flavor Preferences Through Online Recipes |
| title_fullStr | Decoding Global Palates: Unveiling Cross-Cultural Flavor Preferences Through Online Recipes |
| title_full_unstemmed | Decoding Global Palates: Unveiling Cross-Cultural Flavor Preferences Through Online Recipes |
| title_short | Decoding Global Palates: Unveiling Cross-Cultural Flavor Preferences Through Online Recipes |
| title_sort | decoding global palates unveiling cross cultural flavor preferences through online recipes |
| topic | food preferences flavor compounds food cultures food recommender systems |
| url | https://www.mdpi.com/2304-8158/14/8/1411 |
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