Litcius/Paper detail

Learning Causal Representations for Robust Domain Adaptation

Shuai Yang, Kui Yu, Fuyuan Cao, Lin Liu, Hao Wang, Jiuyong Li

2021IEEE Transactions on Knowledge and Data Engineering21 citationsDOIOpen Access PDF

Abstract

In this study, we investigate a challenging problem, namely, robust domain adaptation, where data from only a single well-labeled source domain are available in the training phase. To address this problem, assuming that the causal relationships between the features and the class variable are robust across domains, we propose a novel causal autoencoder (CAE), which integrates a deep autoencoder and a causal structure learning model to learn causal representations using data from a single source domain. Specifically, a deep autoencoder model is adopted to learn the low-dimensional representations, and a causal structure learning model is designed to separate the low-dimensional representations into two groups: causal representations and task-irrelevant representations. Using three real-world datasets, the experiments have validated the effectiveness of CAE, in comparison with eleven state-of-the-art methods.

Topics & Concepts

AutoencoderArtificial intelligenceComputer scienceCausal structureDeep learningCausal modelDomain adaptationDomain (mathematical analysis)Class (philosophy)Machine learningData modelingCausality (physics)Feature learningDomain knowledgeTraining setAdaptation (eye)Pattern recognition (psychology)Causal inferenceRobustness (evolution)Artificial neural networkSynthetic dataVariable (mathematics)Causal reasoningTask analysisDomain Adaptation and Few-Shot LearningTopic ModelingGenerative Adversarial Networks and Image Synthesis