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Predicting Subjective Measures of Social Anxiety from Sparsely Collected Mobile Sensor Data

Article Ecrit par: Rashid, Haroon ; Mendu, Sanjana ; Daniel, Katharine E. ; Beltzer, Miranda L. ; Teachman, Bethany A. ; Boukhechba, Mehdi ; Barnes, Laura E. ;

Résumé: Exploiting the capabilities of smartphones for monitoring social anxiety shows promise for advancing our ability to both identify indicators of and treat social anxiety in natural settings. Smart devices allow researchers to collect passive data unobtrusively through built-in sensors and active data using subjective, self-report measures with Ecological Momentary Assessment (EMA) studies. Prior work has established the potential to predict subjective measures from passive data. However, the majority of the past work on social anxiety has focused on a limited subset of self-reported measures. Furthermore, the data collected in real-world studies often results in numerous missing values in one or more data streams, which ultimately reduces the usable data for analysis and limits the potential of machine learning algorithms. We explore several approaches for addressing these problems in a smartphone-based monitoring and intervention study of eighty socially anxious participants over a five-week period. Our work complements and extends prior work in two directions: (i) we show the predictability of seven different self-reported dimensions of social anxiety, and (ii) we explore four imputation methods to handle missing data and evaluate their effectiveness in the prediction of subjective measures from the passive data. Our evaluation shows imputation of missing data reduces prediction error by as much as 22%. We discuss the implications of these results for future research.


Langue: Anglais