2022
DOI: 10.48550/arxiv.2202.13482
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Causal Domain Adaptation with Copula Entropy based Conditional Independence Test

Abstract: Domain Adaptation (DA) is a typical problem in machine learning that aims to transfer the model trained on source domain to target domain with different distribution. Causal DA is a special case of DA that solves the problem from the view of causality. It embeds the probabilistic relationships in multiple domains in a larger causal structure network of a system and tries to find the causal source (or intervention) on the system as the reason of distribution drifts of the system states across domains. In this s… Show more

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