TS-CausalNN: Learning Temporal Causal Relations from Non-linear Non-stationary Time Series Data

dc.contributor.authorFaruque,Omar
dc.contributor.authorAli, Sahara
dc.contributor.authorZheng, Xue
dc.contributor.authorWang, Jianwu
dc.date.accessioned2024-05-06T15:05:51Z
dc.date.available2024-05-06T15:05:51Z
dc.date.issued2024-04-01
dc.description.abstractThe growing availability and importance of time series data across various domains, including environmental science, epidemiology, and economics, has led to an increasing need for time-series causal discovery methods that can identify the intricate relationships in the non-stationary, non-linear, and often noisy real world data. However, the majority of current time series causal discovery methods assume stationarity and linear relations in data, making them infeasible for the task. Further, the recent deep learning-based methods rely on the traditional causal structure learning approaches making them computationally expensive. In this paper, we propose a Time-Series Causal Neural Network (TS-CausalNN) - a deep learning technique to discover contemporaneous and lagged causal relations simultaneously. Our proposed architecture comprises (i) convolutional blocks comprising parallel custom causal layers, (ii) acyclicity constraint, and (iii) optimization techniques using the augmented Lagrangian approach. In addition to the simple parallel design, an advantage of the proposed model is that it naturally handles the non-stationarity and non-linearity of the data. Through experiments on multiple synthetic and real world datasets, we demonstrate the empirical proficiency of our proposed approach as compared to several state-of-the-art methods. The inferred graphs for the real world dataset are in good agreement with the domain understanding.
dc.description.sponsorshipThis work was partially supported by the DOE Office of Science Early Career Research Program. This work was performed under the auspices of the U.S. Department of Energy (DOE) by LLNL under contract DE-AC52-07NA27344. LLNL-CONF-846980. Faruque, Ali and Wang were also partially supported by grants OAC-1942714 and OAC-2118285 from the U.S. National Science Foundation (NSF).
dc.description.urihttps://arxiv.org/abs/2404.01466v1
dc.format.extent32 pages
dc.genrejournal articles
dc.genrepreprints
dc.identifierdoi:10.13016/m2ro9i-y5t7
dc.identifier.urihttps://doi.org/10.48550/arXiv.2404.01466
dc.identifier.urihttp://hdl.handle.net/11603/33598
dc.language.isoen_US
dc.relation.isAvailableAtThe University of Maryland, Baltimore County (UMBC)
dc.relation.ispartofUMBC Faculty Collection
dc.relation.ispartofUMBC Student Collection
dc.relation.ispartofUMBC Information Systems Department
dc.rightsThis work was written as part of one of the author's official duties as an Employee of the United States Government and is therefore a work of the United States Government. In accordance with 17 U.S.C. 105, no copyright protection is available for such works under U.S. Law.
dc.rightsPublic Domain
dc.rights.urihttps://creativecommons.org/publicdomain/mark/1.0/
dc.titleTS-CausalNN: Learning Temporal Causal Relations from Non-linear Non-stationary Time Series Data
dc.typeText
dcterms.creatorhttps://orcid.org/0009-0006-8650-4366
dcterms.creatorhttps://orcid.org/0000-0002-9933-1170

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