Domain generalization via conditional invariant representations

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Abstract

Domain generalization aims to apply knowledge gained from multiple labeled source domains to unseen target domains. The main difficulty comes from the dataset bias: training data and test data have different distributions, and the training set contains heterogeneous samples from different distributions. Let X denote the features, and Y be the class labels. Existing domain generalization methods address the dataset bias problem by learning a domain-invariant representation h(X) that has the same marginal distribution P(h(X)) across multiple source domains. The functional relationship encoded in P(Y |X) is usually assumed to be stable across domains such that P(Y |h(X)) is also invariant. However, it is unclear whether this assumption holds in practical problems. In this paper, we consider the general situation where both P(X) and P(Y |X) can change across all domains. We propose to learn a feature representation which has domain-invariant class conditional distributions P(h(X)|Y ). With the conditional invariant representation, the invariance of the joint distribution P(h(X), Y ) can be guaranteed if the class prior P(Y ) does not change across training and test domains. Extensive experiments on both synthetic and real data demonstrate the effectiveness of the proposed method.

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Li, Y., Gong, M., Tian, X., Liu, T., & Tao, D. (2018). Domain generalization via conditional invariant representations. In 32nd AAAI Conference on Artificial Intelligence, AAAI 2018 (pp. 3579–3587). AAAI press. https://doi.org/10.1609/aaai.v32i1.11682

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