Understanding the Social Context of Eating with Multimodal Smartphone Sensing: The Role of Country Diversity

June 01, 2023 Β· Declared Dead Β· πŸ› International Conference on Multimodal Interaction

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Authors Nathan Kammoun, Lakmal Meegahapola, Daniel Gatica-Perez arXiv ID 2306.00709 Category cs.HC: Human-Computer Interaction Cross-listed cs.CY Citations 10 Venue International Conference on Multimodal Interaction Last Checked 4 months ago
Abstract
Understanding the social context of eating is crucial for promoting healthy eating behaviors. Multimodal smartphone sensor data could provide valuable insights into eating behavior, particularly in mobile food diaries and mobile health apps. However, research on the social context of eating with smartphone sensor data is limited, despite extensive studies in nutrition and behavioral science. Moreover, the impact of country differences on the social context of eating, as measured by multimodal phone sensor data and self-reports, remains under-explored. To address this research gap, our study focuses on a dataset of approximately 24K self-reports on eating events provided by 678 college students in eight countries to investigate the country diversity that emerges from smartphone sensors during eating events for different social contexts (alone or with others). Our analysis revealed that while some smartphone usage features during eating events were similar across countries, others exhibited unique trends in each country. We further studied how user and country-specific factors impact social context inference by developing machine learning models with population-level (non-personalized) and hybrid (partially personalized) experimental setups. We showed that models based on the hybrid approach achieve AUC scores up to 0.75 with XGBoost models. These findings emphasize the importance of considering country differences in building and deploying machine learning models to minimize biases and improve generalization across different populations.
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