Debeire, Kevin und Gerhardus, Andreas und Runge, Jakob und Eyring, Veronika (2024) Bootstrap aggregation and confidence measures to improve time series causal discovery. In: 3rd Conference on Causal Learning and Reasoning, CLeaR 2024, 236, Seiten 979-1007. 3rd Conference on Causal Learning and Reasoning, CLeaR 2024 (Scopus; ISSN: 2640-3498), 2024-04-01, Los Angeles, USA. ISSN 2640-3498.
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Offizielle URL: https://proceedings.mlr.press/v236/debeire24a.html
Kurzfassung
Learning causal graphs from multivariate time series is an ubiquitous challenge in all application domains dealing with time-dependent systems, such as in Earth sciences, biology, or engineering, to name a few. Recent developments for this causal discovery learning task have shown considerable skill, notably the specific time-series adaptations of the popular conditional independence-based learning framework. However, uncertainty estimation is challenging for conditional independence- based methods. Here, we introduce a novel bootstrap approach designed for time series causal discovery that preserves the temporal dependencies and lag-structure. It can be combined with a range of time series causal discovery methods and provides a measure of confidence for the links of the time series graphs. Furthermore, next to confidence estimation, an aggregation, also called bagging, of the bootstrapped graphs by majority voting results in bagged causal discovery methods. In this work, we combine this approach with the state-of-the-art conditional-independence-based algorithm PCMCI+. With extensive numerical experiments we empirically demonstrate that, in addition to providing confidence measures for links, Bagged-PCMCI+ improves in precision and recall as compared to its base algorithm PCMCI+, at the cost of higher computational demands. These statistical performance improvements are especially pronounced in the more challenging settings (short time sample size, large number of variables, high autocorrelation). Our bootstrap approach can also be combined with other time series causal discovery algorithms and can be of considerable use in many real-world applications.
elib-URL des Eintrags: | https://elib.dlr.de/204713/ | ||||||||||||||||||||
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Dokumentart: | Konferenzbeitrag (Poster) | ||||||||||||||||||||
Titel: | Bootstrap aggregation and confidence measures to improve time series causal discovery | ||||||||||||||||||||
Autoren: |
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Datum: | 2024 | ||||||||||||||||||||
Erschienen in: | 3rd Conference on Causal Learning and Reasoning, CLeaR 2024 | ||||||||||||||||||||
Referierte Publikation: | Ja | ||||||||||||||||||||
Open Access: | Ja | ||||||||||||||||||||
Gold Open Access: | Nein | ||||||||||||||||||||
In SCOPUS: | Ja | ||||||||||||||||||||
In ISI Web of Science: | Nein | ||||||||||||||||||||
Band: | 236 | ||||||||||||||||||||
Seitenbereich: | Seiten 979-1007 | ||||||||||||||||||||
Herausgeber: |
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Name der Reihe: | Proceedings of Machine Learning Research | ||||||||||||||||||||
ISSN: | 2640-3498 | ||||||||||||||||||||
Status: | veröffentlicht | ||||||||||||||||||||
Stichwörter: | causal discovery, bootstrap aggregation, confidence measure | ||||||||||||||||||||
Veranstaltungstitel: | 3rd Conference on Causal Learning and Reasoning, CLeaR 2024 (Scopus; ISSN: 2640-3498) | ||||||||||||||||||||
Veranstaltungsort: | Los Angeles, USA | ||||||||||||||||||||
Veranstaltungsart: | internationale Konferenz | ||||||||||||||||||||
Veranstaltungsdatum: | 1 April 2024 | ||||||||||||||||||||
HGF - Forschungsbereich: | Luftfahrt, Raumfahrt und Verkehr | ||||||||||||||||||||
HGF - Programm: | Raumfahrt | ||||||||||||||||||||
HGF - Programmthema: | Erdbeobachtung | ||||||||||||||||||||
DLR - Schwerpunkt: | Raumfahrt | ||||||||||||||||||||
DLR - Forschungsgebiet: | R EO - Erdbeobachtung | ||||||||||||||||||||
DLR - Teilgebiet (Projekt, Vorhaben): | R - Atmosphären- und Klimaforschung | ||||||||||||||||||||
Standort: | Jena , Oberpfaffenhofen | ||||||||||||||||||||
Institute & Einrichtungen: | Institut für Physik der Atmosphäre > Erdsystemmodell -Evaluation und -Analyse Institut für Datenwissenschaften > Datenanalyse und -intelligenz | ||||||||||||||||||||
Hinterlegt von: | Debeire, Kevin | ||||||||||||||||||||
Hinterlegt am: | 21 Nov 2024 09:51 | ||||||||||||||||||||
Letzte Änderung: | 21 Nov 2024 09:51 |
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