Dynamic Factor Graphs for Time Series Modeling

被引:0
|
作者
Mirowski, Piotr [1 ]
LeCun, Yann [1 ]
机构
[1] NYU, Courant Inst Math Sci, New York, NY 10003 USA
来源
MACHINE LEARNING AND KNOWLEDGE DISCOVERY IN DATABASES, PT II | 2009年 / 5782卷
关键词
factor graphs; time series; dynamic Bayesian networks; recurrent networks; expectation-maximization;
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
This article presents a method for training Dynamic Factor Graphs (DFG) with continuous latent state variables. A DFG includes factors modeling joint probabilities between hidden and observed variables, and factors modeling dynamical constraints on hidden variables. The DFG assigns a scalar energy to each configuration of hidden and observed variables. A gradient-based inference procedure finds the minimum-energy state sequence for a, given observation sequence. Because the factors are designed to ensure a constant partition function, they can be trained by minimizing the expected energy over training sequences with respect to the factors parameters. These alternated inference and parameter updates can be seen as a deterministic ISM-like procedure. Using smoothing regularizers, DFGs are shown to reconstruct chaotic attractors and to separate a mixture of independent oscillatory sources perfectly. DFGs outperform the best known algorithm on the CATS competition benchmark for time series prediction. DFGs also successfully reconstruct missing motion capture data.
引用
收藏
页码:128 / 143
页数:16
相关论文
共 50 条
  • [1] Contrastive Learning for Time Series on Dynamic Graphs
    Zhang, Yitian
    Regol, Florence
    Valkanas, Antonios
    Coates, Mark
    2022 30TH EUROPEAN SIGNAL PROCESSING CONFERENCE (EUSIPCO 2022), 2022, : 742 - 746
  • [2] Time series modeling on dynamic networks
    Krampe, Jonas
    ELECTRONIC JOURNAL OF STATISTICS, 2019, 13 (02): : 4945 - 4976
  • [3] A GENERAL APPROACH FOR DYNAMIC MODELING OF PHYSIOLOGICAL TIME SERIES
    Pfeifer, M.
    Lenis, G.
    Doessel, O.
    BIOMEDICAL ENGINEERING-BIOMEDIZINISCHE TECHNIK, 2013, 58
  • [4] The dynamic evolutionary modeling of HODEs for time series prediction
    Cao, HQ
    Kang, LS
    Chen, YP
    Guo, T
    COMPUTERS & MATHEMATICS WITH APPLICATIONS, 2003, 46 (8-9) : 1397 - 1411
  • [5] A GENERAL APPROACH FOR DYNAMIC MODELING OF PHYSIOLOGICAL TIME SERIES
    Pfeifer, M.
    Lenis, G.
    Doessel, O.
    BIOMEDICAL ENGINEERING-BIOMEDIZINISCHE TECHNIK, 2013, 58
  • [6] Modeling and Simulation of Time Series Prediction Based on Dynamic Neural Network
    王雪松
    程玉虎
    彭光正
    Journal of Beijing Institute of Technology(English Edition), 2004, (02) : 148 - 151
  • [7] On modeling panels of time series
    Franses, Philip Hans
    STATISTICA NEERLANDICA, 2006, 60 (04) : 438 - 456
  • [8] MTT-DynGL: Towards Multidimensional Topology -oriented Time -series Dynamic Graphs Learning Model
    Shi, Chen
    Mao, Yujie
    Shen, Yiding
    Xiong, Wenli
    Liu, Feng
    Li, Chenhui
    Wang, Changbo
    23RD IEEE INTERNATIONAL CONFERENCE ON DATA MINING, ICDM 2023, 2023, : 1313 - 1318
  • [9] PROBABILITY AGGREGATION IN TIME-SERIES: DYNAMIC HIERARCHICAL MODELING OF SPARSE EXPERT BELIEFS
    Satopaa, Ville A.
    Jensen, Shane T.
    Mellers, Barbara A.
    Tetlock, Philip E.
    Ungar, Lyle H.
    ANNALS OF APPLIED STATISTICS, 2014, 8 (02) : 1256 - 1280
  • [10] Dynamic Aggregation for Time Series Forecasting
    Iosevich, S.
    Arutyunyants, G.
    Hou, Z.
    PROCEEDINGS 2015 IEEE INTERNATIONAL CONFERENCE ON BIG DATA, 2015, : 2129 - 2131