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Comparative study of clustering models for multivariate time series from connected medical devices

Authors :
Courrier, Violaine
Biernacki, Christophe
Preda, Cristian
Vittrant, Benjamin
Publication Year :
2023

Abstract

In healthcare, patient data is often collected as multivariate time series, providing a comprehensive view of a patient's health status over time. While this data can be sparse, connected devices may enhance its frequency. The goal is to create patient profiles from these time series. In the absence of labels, a predictive model can be used to predict future values while forming a latent cluster space, evaluated based on predictive performance. We compare two models on Withing's datasets, M AGMAC LUST which clusters entire time series and DGM${}^2$ which allows the group affiliation of an individual to change over time (dynamic clustering).<br />Comment: in French language. EGC 2024 - 24{\`e}me Conf{\'e}rence Francophone sur l'Extraction et Gestion des Connaissances, Jan 2024, Dijon, France

Details

Language :
French
Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2312.17286
Document Type :
Working Paper