Mixture of Coupled HMMs for Robust Modeling of Multivariate Healthcare Time Series

被引:0
|
作者
Poyraz, Onur [1 ]
Marttinen, Pekka [1 ]
机构
[1] Aalto Univ, Dept Comp Sci, Espoo, Finland
来源
MACHINE LEARNING FOR HEALTH, ML4H, VOL 225 | 2023年 / 225卷
基金
芬兰科学院;
关键词
Markov Chain Monte Carlo (MCMC); Multivariate Time Series; Probabilistic Graphical Models; Robustness; HIDDEN MARKOV-MODELS;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Analysis of multivariate healthcare time series data is inherently challenging: irregular sampling, noisy and missing values, and heterogeneous patient groups with different dynamics violating exchangeability. In addition, interpretability and quantification of uncertainty are critically important. Here, we propose a novel class of models, a mixture of coupled hidden Markov models (M-CHMM), and demonstrate how it elegantly overcomes these challenges. To make the model learning feasible, we derive two algorithms to sample the sequences of the latent variables in the CHMM: samplers based on (i) particle filtering and (ii) factorized approximation. Compared to existing inference methods, our algorithms are computationally tractable, improve mixing, and allow for likelihood estimation, which is necessary to learn the mixture model. Experiments on challenging realworld epidemiological and semi-synthetic data demonstrate the advantages of the M-CHMM: improved data fit, capacity to efficiently handle missing and noisy measurements, improved prediction accuracy, and ability to identify interpretable subsets in the data.
引用
收藏
页码:461 / 479
页数:19
相关论文
共 50 条
  • [1] Robust classification of multivariate time series by imprecise hidden Markov models
    Antonucci, Alessandro
    De Rosa, Rocco
    Giusti, Alessandro
    Cuzzolin, Fabio
    INTERNATIONAL JOURNAL OF APPROXIMATE REASONING, 2015, 56 : 249 - 263
  • [2] Autoregressive forests for multivariate time series modeling
    Tuncel, Kerem Sinan
    Baydogan, Mustafa Gokce
    PATTERN RECOGNITION, 2018, 73 : 202 - 215
  • [3] Deep probabilistic graphical modeling for robust multivariate time series anomaly detection with missing data
    Yang, Jingyu
    Yue, Zuogong
    Yuan, Ye
    RELIABILITY ENGINEERING & SYSTEM SAFETY, 2023, 238
  • [4] Robust mixture of linear mixed modeling via multivariate Laplace distribution
    Li, Xiongya
    Bai, Xiuqin
    Song, Weixing
    COMPUTATIONAL STATISTICS, 2025,
  • [5] Robust Unsupervised Anomaly Detection With Variational Autoencoder in Multivariate Time Series Data
    Yokkampon, Umaporn
    Mowshowitz, Abbe
    Chumkamon, Sakmongkon
    Hayashi, Eiji
    IEEE ACCESS, 2022, 10 : 57835 - 57849
  • [6] Multivariate time series modeling, estimation and prediction of mortalities
    Ekheden, Erland
    Hossjer, Ola
    INSURANCE MATHEMATICS & ECONOMICS, 2015, 65 : 156 - 171
  • [7] Linguistic Descriptions As a Modeling Tool For Multivariate Time Series
    Rusnok, Pavel
    PROCEEDINGS OF THE 2015 CONFERENCE OF THE INTERNATIONAL FUZZY SYSTEMS ASSOCIATION AND THE EUROPEAN SOCIETY FOR FUZZY LOGIC AND TECHNOLOGY, 2015, 89 : 981 - 986
  • [8] Sparse Binary Transformers for Multivariate Time Series Modeling
    Gorbett, Matt
    Shirazi, Hossein
    Ray, Indrakshi
    PROCEEDINGS OF THE 29TH ACM SIGKDD CONFERENCE ON KNOWLEDGE DISCOVERY AND DATA MINING, KDD 2023, 2023, : 544 - 556
  • [9] Coupled Attention Networks for Multivariate Time Series Anomaly Detection
    Xia, Feng
    Chen, Xin
    Yu, Shuo
    Hou, Mingliang
    Liu, Mujie
    You, Linlin
    IEEE TRANSACTIONS ON EMERGING TOPICS IN COMPUTING, 2024, 12 (01) : 240 - 253
  • [10] Robust and Adaptive Filtering of Multivariate Online-Monitoring Time Series
    Borowski, M.
    Imhoff, M.
    Schettlinger, K.
    Gather, U.
    4TH EUROPEAN CONFERENCE OF THE INTERNATIONAL FEDERATION FOR MEDICAL AND BIOLOGICAL ENGINEERING, 2009, 22 (1-3): : 167 - 170