Change-point detection in hierarchical circadian models

被引:5
作者
Moreno-Munoz, Pablo [1 ,2 ]
Ramirez, David [1 ,2 ]
Artes-Rodriguez, Antonio [1 ,2 ]
机构
[1] Gregorio Maranon Hlth Res Inst, Madrid, Spain
[2] Univ Carlos III Madrid, Dept Signal Theory & Commun, Leganes, Spain
关键词
Change-point detection; Circadian models; Heterogeneous data; Latent variable models; Non-stationary periodic covariance; functions; ANOMALY DETECTION; INFERENCE; SERIES;
D O I
10.1016/j.patcog.2021.107820
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
This paper addresses the problem of change-point detection in sequences of high-dimensional and heterogeneous observations, which also possess a periodic temporal structure. Due to the dimensionality problem, when the time between change points is of the order of the dimension of the model parameters, drifts in the underlying distribution can be misidentified as changes. To overcome this limitation, we assume that the observations lie in a lower-dimensional manifold that admits a latent variable representation. In particular, we propose a hierarchical model that is computationally feasible, widely applicable to heterogeneous data and robust to missing instances. Additionally, the observations' periodic dependencies are captured by non-stationary periodic covariance functions. The proposed technique is particularly well suited to (and motivated by) the problem of detecting changes in human behavior using smartphones and its application to relapse detection in psychiatric patients. Finally, we validate the technique on synthetic examples and we demonstrate its utility in the detection of behavioral changes using real data acquired by smartphones. (c) 2021 Elsevier Ltd. All rights reserved.
引用
收藏
页数:10
相关论文
共 31 条
[1]  
Adams R. P., 2007, ARXIV07103742
[2]  
Basseville Michele, 1993, Detection of abrupt changes: theory and application
[3]   Combining Continuous Smartphone Native Sensors Data Capture and Unsupervised Data Mining Techniques for Behavioral Changes Detection: A Case Series of the Evidence-Based Behavior (eB2) Study [J].
Berrouiguet, Sofian ;
Ramirez, David ;
Luisa Barrigon, Maria ;
Moreno-Munoz, Pablo ;
Carmona Camacho, Rodrigo ;
Baca-Garcia, Enrique ;
Artes-Rodriguez, Antonio .
JMIR MHEALTH AND UHEALTH, 2018, 6 (12)
[4]   Principles of time-frequency feature extraction for change detection in non-stationary signals: Applications to newborn EEG abnormality detection [J].
Boashash, Boualem ;
Azemi, Ghasem ;
Khan, Nabeel Ali .
PATTERN RECOGNITION, 2015, 48 (03) :616-627
[5]   Intelligent video surveillance for real-time detection of suicide attempts [J].
Bouachir, Wassim ;
Gouiaa, Rafik ;
Li, Bo ;
Noumeir, Rita .
PATTERN RECOGNITION LETTERS, 2018, 110 :1-7
[6]   Trajectories of Depression: Unobtrusive Monitoring of Depressive States by means of Smartphone Mobility Traces Analysis [J].
Canzian, Luca ;
Musolesi, Mirco .
PROCEEDINGS OF THE 2015 ACM INTERNATIONAL JOINT CONFERENCE ON PERVASIVE AND UBIQUITOUS COMPUTING (UBICOMP 2015), 2015, :1293-1304
[7]   Bayesian change detection based on spatial sampling and Gaussian mixture model [J].
Celik, Turgay .
PATTERN RECOGNITION LETTERS, 2011, 32 (12) :1635-1642
[8]   MAXIMUM LIKELIHOOD FROM INCOMPLETE DATA VIA EM ALGORITHM [J].
DEMPSTER, AP ;
LAIRD, NM ;
RUBIN, DB .
JOURNAL OF THE ROYAL STATISTICAL SOCIETY SERIES B-METHODOLOGICAL, 1977, 39 (01) :1-38
[9]   Detecting periodicities with Gaussian processes [J].
Durrande, Nicolas ;
Hensman, James ;
Rattray, Magnus ;
Lawrence, Neil D. .
PEERJ COMPUTER SCIENCE, 2016, 2016 (04)
[10]   Eigenbehaviors: identifying structure in routine [J].
Eagle, Nathan ;
Pentland, Alex Sandy .
BEHAVIORAL ECOLOGY AND SOCIOBIOLOGY, 2009, 63 (07) :1057-1066