Passive mobile sensing and psychological traits for large scale mood prediction

被引:26
作者
Spathis, Dimitris [1 ]
Servia-Rodrigue, Sandra [1 ]
Farrahi, Katayoun [2 ]
Mascolo, Cecilia [1 ]
Rentfrow, Jason [3 ]
机构
[1] Univ Cambridge, Dept Comp Sci & Tech, Cambridge, England
[2] Univ Southampton, Dept Elect & Comp Sci, Southampton, Hants, England
[3] Univ Cambridge, Dept Psychol, Cambridge, England
来源
PROCEEDINGS OF THE 13TH EAI INTERNATIONAL CONFERENCE ON PERVASIVE COMPUTING TECHNOLOGIES FOR HEALTHCARE (PERVASIVEHEALTH 2019) | 2019年
基金
英国工程与自然科学研究理事会;
关键词
machine learning; mobile sensing; multi-modal data; mood prediction; PERSONALITY; VALIDATION; HAPPINESS; HEALTH;
D O I
10.1145/3329189.3329213
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Experience sampling has long been the established method to sample people's mood in order to assess their mental state. Smartphones start to be used as experience sampling tools for mental health state as they accompany individuals during their day and can therefore gather in-the-moment data. However, the granularity of the data needs to be traded off with the level of interruption these tools introduce. As a consequence the data collected with this technique is often sparse. This has been obviated by the use of passive sensing in addition to mood reports, however, this adds additional noise. In this paper we show that psychological traits collected through one-off questionnaires combined with passively collected sensing data ( movement from the accelerometer and noise levels from the microphone) can be used to detect individuals whose general mood deviates from the common relaxed characteristic of the general population. By using the reported mood as a classification target we show how to design models that depend only on passive sensors and one-off questionnaires, without bothering users with tedious experience sampling. We validate our approach by using a large dataset of mood reports and passive sensing data collected in the wild with tens of thousands of participants, finding that the combination of these modalities achieves the best classification performance, and that passive sensing yields a +5% boost in accuracy. We also show that sensor data collected for a week performs better than single days for this task. We discuss feature extraction techniques and appropriate classifiers for this kind of multimodal data, as well as overfitting shortcomings of using deep learning to handle static and dynamic features. We believe these findings have significant implications for mobile health applications that can benefit from the correct modeling of passive sensing along with extra user metadata.
引用
收藏
页码:272 / 281
页数:10
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