Publication | Closed Access
Fusing location data for depression prediction
21
Citations
28
References
2017
Year
Unknown Venue
EngineeringWearable TechnologyFeature ExtractionLocalizationData ScienceData MiningDepression PredictionStatisticsMobility DataSpatial Statistical AnalysisHealth GeographyPredictive AnalyticsDepression ScreeningMobile ComputingMobile Positioning DataFunctional Data AnalysisMobile SensingMental Health MonitoringLocation Information
Recent studies have demonstrated that geographic location features collected using smartphones can be a powerful predictor for depression. While location information can be conveniently gathered by GPS, typical datasets suffer from significant periods of missing data due to various factors (e.g., phone power dynamics, limitations of GPS). A common approach is to remove the time periods with significant missing data before data analysis. In this paper, we develop an approach that fuses location data collected from two sources: GPS and WiFi association records. Our evaluation demonstrates that our data fusion approach leads to significantly more complete data, which improves feature extraction and depression screening.
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