Abstract
The advancements in disentangled representation learning significantly enhance the accuracy of counterfactual predictions by granting precise control over instrumental variables, confounders, and adjustable variables. An appealing method for achieving the independent separation of these factors is mutual information minimization, a task that presents challenges in numerous machine learning scenarios, especially within high-dimensional spaces. To circumvent this challenge, we propose the Self-Distilled Disentanglement framework, referred to as SD2. Grounded in information theory, it ensures theoretically sound independent disentangled representations without intricate mutual information estimator designs for high-dimensional representations. Our comprehensive experiments, conducted on both synthetic and real-world datasets, confirms the effectiveness of our approach in facilitating counterfactual inference in the presence of both observed and unobserved confounders.
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CITATION STYLE
Li, X., Gong, M., & Yao, L. (2024). Self-Distilled Disentangled Learning for Counterfactual Prediction. In Proceedings of the ACM SIGKDD International Conference on Knowledge Discovery and Data Mining (pp. 1667–1678). Association for Computing Machinery. https://doi.org/10.1145/3637528.3671782
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