Causal Discovery for time series from multiple datasets with latent contexts

被引:0
|
作者
Guenther, Wiebke [1 ]
Ninad, Urmi [1 ,2 ]
Runge, Jakob [1 ,2 ]
机构
[1] German Aerosp Ctr, Inst Data Sci, D-07745 Jena, Germany
[2] Techn Univ Berlin, Dept Elect Engn & Comp Sci, D-10623 Berlin, Germany
来源
基金
欧洲研究理事会;
关键词
INFERENCE; 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
Causal discovery from time series data is a typical problem setting across the sciences. Often, multiple datasets of the same system variables are available, for instance, time series of river runoff from different catchments. The local catchment systems then share certain causal parents, such as time-dependent large-scale weather over all catchments, but differ in other catchment-specific drivers, such as the altitude of the catchment. These drivers can be called temporal and spatial contexts, respectively, and are often partially unobserved. Pooling the datasets and considering the joint causal graph among system, context, and certain auxiliary variables enables us to overcome such latent confounding of system variables. In this work, we present a non-parametric time series causal discovery method, J(oint)-PCMCI+, that efficiently learns such joint causal time series graphs when both observed and latent contexts are present, including time lags. We present asymptotic consistency results and numerical experiments demonstrating the utility and limitations of the method.
引用
收藏
页码:766 / 776
页数:11
相关论文
共 50 条
  • [31] Discovering contemporaneous and lagged causal relations in autocorrelated nonlinear time series datasets
    Runge, Jakob
    CONFERENCE ON UNCERTAINTY IN ARTIFICIAL INTELLIGENCE (UAI 2020), 2020, 124 : 1388 - 1397
  • [32] Causal inference with multiple time series: principles and problems
    Eichler, Michael
    PHILOSOPHICAL TRANSACTIONS OF THE ROYAL SOCIETY A-MATHEMATICAL PHYSICAL AND ENGINEERING SCIENCES, 2013, 371 (1997):
  • [33] Discovering Latent Covariance Structures for Multiple Time Series
    Tong, Anh
    Choi, Jaesik
    INTERNATIONAL CONFERENCE ON MACHINE LEARNING, VOL 97, 2019, 97
  • [34] CUTS plus : High-Dimensional Causal Discovery from Irregular Time-Series
    Cheng, Yuxiao
    Li, Lianglong
    Xiao, Tingxiong
    Li, Zongren
    Suo, Jinli
    He, Kunlun
    Dai, Qionghai
    THIRTY-EIGHTH AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE, VOL 38 NO 10, 2024, : 11525 - 11533
  • [35] CDANs: Temporal Causal Discovery from Autocorrelated and Non-Stationary Time Series Data
    Ferdous, Muhammad Hasan
    Hasan, Uzma
    Gani, Md Osman
    MACHINE LEARNING FOR HEALTHCARE CONFERENCE, VOL 219, 2023, 219
  • [36] Causal Discovery in Linear Non-Gaussian Acyclic Model With Multiple Latent Confounders
    Chen, Wei
    Cai, Ruichu
    Zhang, Kun
    Hao, Zhifeng
    IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2022, 33 (07) : 2816 - 2827
  • [37] Causal Discovery From Unknown Interventional Datasets Over Overlapping Variable Sets
    Cao, Fuyuan
    Wang, Yunxia
    Yu, Kui
    Liang, Jiye
    IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2024, 36 (12) : 7725 - 7742
  • [38] Neural Additive Vector Autoregression Models for Causal Discovery in Time Series
    Bussmann, Bart
    Nys, Jannes
    Latre, Steven
    DISCOVERY SCIENCE (DS 2021), 2021, 12986 : 446 - 460
  • [39] Entropy-Based Discovery of Summary Causal Graphs in Time Series
    Assaad, Charles K.
    Devijver, Emilie
    Gaussier, Eric
    ENTROPY, 2022, 24 (08)
  • [40] Using causal discovery for feature selection in multivariate numerical time series
    Youqiang Sun
    Jiuyong Li
    Jixue Liu
    Christopher Chow
    Bingyu Sun
    Rujing Wang
    Machine Learning, 2015, 101 : 377 - 395