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Publikation

Causality in Flux: Continual Adaptation of Causal Knowledge via Evidence Matching

Jonas Seng; Florian Peter Busch; Kristian Kersting
In: Martin Mundt; Keiland W. Cooper; Devendra Singh Dhami; Tyler L. Hayes; Rebecca Herman; Adéle Ribeiro; James Seale Smith (Hrsg.). Proceedings of The Second AAAI Bridge Program on Continual Causality. AAAI Bridge Program on Continual Causality, February 20-21, Vancouver, Canada, Pages 11-20, Proceedings of Machine Learning Research (PMLR), Vol. 268, PMLR, 2024.

Zusammenfassung

Utilising causal knowledge in machine learning (ML) systems yields more robust models with the capability of performing certain extrapolations. However, much of current causal- ity research focuses on deriving causal models in isolation, hence current systems are not capable of updating and improving causal knowledge when new observations arrive. Draw- ing inspiration from human learning, Continual Learning (CL) aims at updating models given a sequential stream of evidence. Leveraging common patterns and past experiences to gradually improve causal knowledge in ML models is a crucial step towards more robust CL systems. In this work, we propose to learn and update causal models in a lifelong learn- ing setting where causal knowledge explaining newly arriving observations is inferred from similar previously seen observations. We call this framework evidence matching. Further, an analysis of real world data supporting our motivation is provided

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