Generalization and Personalization of Mobile Sensing-Based Mood Inference Models: An Analysis of College Students in Eight Countries
Lakmal Meegahapola, William Droz, Peter Kun, Amalia de Gotzen,, Chaitanya Nutakki, Shyam Diwakar, Salvador Ruiz Correa, Donglei Song, Hao Xu,, Miriam Bidoglia, George Gaskell, Altangerel Chagnaa, Amarsanaa Ganbold,, Tsolmon Zundui, Carlo Caprini, Daniele Miorandi, Alethia Hume

TL;DR
This study evaluates how well mobile sensing-based mood inference models generalize across different countries and explores the impact of geographical diversity on model performance, highlighting challenges in cross-country generalization.
Contribution
It provides a comprehensive analysis of mood inference model generalization across eight countries using a large, diverse dataset and compares various training and testing approaches.
Findings
Partially personalized models perform best with AUROC scores up to 0.98.
Models show significant generalization issues when applied to new countries.
Geographical similarity influences the effectiveness of mood inference models.
Abstract
Mood inference with mobile sensing data has been studied in ubicomp literature over the last decade. This inference enables context-aware and personalized user experiences in general mobile apps and valuable feedback and interventions in mobile health apps. However, even though model generalization issues have been highlighted in many studies, the focus has always been on improving the accuracies of models using different sensing modalities and machine learning techniques, with datasets collected in homogeneous populations. In contrast, less attention has been given to studying the performance of mood inference models to assess whether models generalize to new countries. In this study, we collected a mobile sensing dataset with 329K self-reports from 678 participants in eight countries (China, Denmark, India, Italy, Mexico, Mongolia, Paraguay, UK) to assess the effect of geographical…
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