Rhino: Deep Causal Temporal Relationship Learning With History-dependent Noise

Discovering causal relationships between different variables from time series data has been a long-standing challenge for many domains such as climate science, finance, and healthcare. Given the complexity of real-world relationships and the nature of observations in discrete time, causal discovery...

Full description

Saved in:
Bibliographic Details
Main Authors Gong, Wenbo, Jennings, Joel, Zhang, Cheng, Pawlowski, Nick
Format Journal Article
LanguageEnglish
Published 26.10.2022
Subjects
Online AccessGet full text

Cover

Loading…
Abstract Discovering causal relationships between different variables from time series data has been a long-standing challenge for many domains such as climate science, finance, and healthcare. Given the complexity of real-world relationships and the nature of observations in discrete time, causal discovery methods need to consider non-linear relations between variables, instantaneous effects and history-dependent noise (the change of noise distribution due to past actions). However, previous works do not offer a solution addressing all these problems together. In this paper, we propose a novel causal relationship learning framework for time-series data, called Rhino, which combines vector auto-regression, deep learning and variational inference to model non-linear relationships with instantaneous effects while allowing the noise distribution to be modulated by historical observations. Theoretically, we prove the structural identifiability of Rhino. Our empirical results from extensive synthetic experiments and two real-world benchmarks demonstrate better discovery performance compared to relevant baselines, with ablation studies revealing its robustness under model misspecification.
AbstractList Discovering causal relationships between different variables from time series data has been a long-standing challenge for many domains such as climate science, finance, and healthcare. Given the complexity of real-world relationships and the nature of observations in discrete time, causal discovery methods need to consider non-linear relations between variables, instantaneous effects and history-dependent noise (the change of noise distribution due to past actions). However, previous works do not offer a solution addressing all these problems together. In this paper, we propose a novel causal relationship learning framework for time-series data, called Rhino, which combines vector auto-regression, deep learning and variational inference to model non-linear relationships with instantaneous effects while allowing the noise distribution to be modulated by historical observations. Theoretically, we prove the structural identifiability of Rhino. Our empirical results from extensive synthetic experiments and two real-world benchmarks demonstrate better discovery performance compared to relevant baselines, with ablation studies revealing its robustness under model misspecification.
Author Pawlowski, Nick
Jennings, Joel
Gong, Wenbo
Zhang, Cheng
Author_xml – sequence: 1
  givenname: Wenbo
  surname: Gong
  fullname: Gong, Wenbo
– sequence: 2
  givenname: Joel
  surname: Jennings
  fullname: Jennings, Joel
– sequence: 3
  givenname: Cheng
  surname: Zhang
  fullname: Zhang, Cheng
– sequence: 4
  givenname: Nick
  surname: Pawlowski
  fullname: Pawlowski, Nick
BackLink https://doi.org/10.48550/arXiv.2210.14706$$DView paper in arXiv
BookMark eNotz01OwzAUBGAvYFEKB-gKXyDFdvxshx0KP0WKilRFYhk5zQuxlNqRHRC9PaWwmtEsRvquyIUPHglZcbaWBoDd2fjtvtZCnAYuNVMLst0Nzod7-og40dJ-JjvSGg9TiKeyw9HOLvg0uIlWaKN3_oO-u3mgG5fmEI9ZhxP6Dv1Mt8ElvCaXvR0T3vznktTPT3W5yaq3l9fyocqs0irTe6FVoVprmG5bycGA7swe-16DUAyU6QuuZWtQoWEgQXPGCwEgc6lFl-dLcvt3ewY1U3QHG4_NL6w5w_IfzDxI3w
ContentType Journal Article
Copyright http://arxiv.org/licenses/nonexclusive-distrib/1.0
Copyright_xml – notice: http://arxiv.org/licenses/nonexclusive-distrib/1.0
DBID AKY
EPD
GOX
DOI 10.48550/arxiv.2210.14706
DatabaseName arXiv Computer Science
arXiv Statistics
arXiv.org
DatabaseTitleList
Database_xml – sequence: 1
  dbid: GOX
  name: arXiv.org
  url: http://arxiv.org/find
  sourceTypes: Open Access Repository
DeliveryMethod fulltext_linktorsrc
ExternalDocumentID 2210_14706
GroupedDBID AKY
EPD
GOX
ID FETCH-LOGICAL-a676-7c27696ba807bb415857d8ceff75260568f9174b8e6e805457101925543472d33
IEDL.DBID GOX
IngestDate Mon Jan 08 05:46:40 EST 2024
IsDoiOpenAccess true
IsOpenAccess true
IsPeerReviewed false
IsScholarly false
Language English
LinkModel DirectLink
MergedId FETCHMERGED-LOGICAL-a676-7c27696ba807bb415857d8ceff75260568f9174b8e6e805457101925543472d33
OpenAccessLink https://arxiv.org/abs/2210.14706
ParticipantIDs arxiv_primary_2210_14706
PublicationCentury 2000
PublicationDate 2022-10-26
PublicationDateYYYYMMDD 2022-10-26
PublicationDate_xml – month: 10
  year: 2022
  text: 2022-10-26
  day: 26
PublicationDecade 2020
PublicationYear 2022
Score 1.8606794
SecondaryResourceType preprint
Snippet Discovering causal relationships between different variables from time series data has been a long-standing challenge for many domains such as climate science,...
SourceID arxiv
SourceType Open Access Repository
SubjectTerms Computer Science - Artificial Intelligence
Computer Science - Learning
Statistics - Machine Learning
Title Rhino: Deep Causal Temporal Relationship Learning With History-dependent Noise
URI https://arxiv.org/abs/2210.14706
hasFullText 1
inHoldings 1
isFullTextHit
isPrint
link http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwdZ1NT8QgEIbJuicvRqNm_QwHr0QXyke9mdV1Y2JNTI29NVDANjHtZts1-u8F2lUvXmEuDIF3CDPPAHAhvBBbrpGmU42igigkp7FFxJBCGmJ0EWA6jwlbvEQPGc1GAG5qYeTqs_ro-cCqvcTYH-qIe6b2FsY-Zev-Kes_JwOKa7D_tXMxZhj6IxLzXbAzRHfwpt-OPTAy9T5Insuqbq7hrTFLOJPr1lmkPRHqHf4ko5XVEg6w0zf4WnUl7AkeX2jTp7aDSVO15gCk87t0tkBDGwMkGWeIF5izmCkprrhSTi8F5VoUxlpO_WOCCeueTJEShhnhAijqNN-FXdTXfHKsCTkE47qpzQRAd3NprSjRumCRjbSkLCbO0Z4qaJkSR2ASFp8ve1JF7v2SB78c_z91Araxz-l3FzJmp2DcrdbmzCltp86Du78BWBl9bg
link.rule.ids 228,230,783,888
linkProvider Cornell University
openUrl ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Ajournal&rft.genre=article&rft.atitle=Rhino%3A+Deep+Causal+Temporal+Relationship+Learning+With+History-dependent+Noise&rft.au=Gong%2C+Wenbo&rft.au=Jennings%2C+Joel&rft.au=Zhang%2C+Cheng&rft.au=Pawlowski%2C+Nick&rft.date=2022-10-26&rft_id=info:doi/10.48550%2Farxiv.2210.14706&rft.externalDocID=2210_14706