DIGNet: Learning Decomposed Patterns in Representation Balancing for Treatment Effect Estimation

Yiyan Huang, Siyi Wang, Cheuk Hang Leung, Qi Wu*, Dongdong Wang, Zhixiang Huang

*Corresponding author for this work

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

Abstract

Estimating treatment effects from observational data is often subject to a covariate shift
problem incurred by selection bias. Recent research has sought to mitigate this problem by
leveraging representation balancing methods that aim to extract balancing patterns from
observational data and utilize them for outcome prediction. The underlying theoretical rationale is that minimizing the unobserved counterfactual error can be achieved through two principles: (I) reducing the risk associated with predicting factual outcomes and (II) mitigating the distributional discrepancy between the treated and controlled samples. However, an inherent trade-off between the two principles can lead to a potential loss of information useful for factual outcome predictions and, consequently, deteriorating treatment effect estimations. In this paper, we propose a novel representation balancing model, DIGNet, for treatment effect estimation. DIGNet incorporates two key components, PDIG and PPBR, which effectively mitigate the trade-off problem by improving one aforementioned principle without sacrificing the other. Specifically, PDIG captures more effective balancing patterns (Principle II) without affecting factual outcome predictions (Principle I), while PPBR enhances factual outcome prediction (Principle I) without affecting the learning of balancing patterns (Principle II). The ablation studies verify the effectiveness of PDIG and PPBR in improving treatment effect estimation, and experimental results on benchmark datasets demonstrate the superior performance of our DIGNet model compared to baseline models.
Original languageEnglish
Number of pages35
JournalTransactions on Machine Learning Research
Volume2024
Online published4 Jun 2024
Publication statusPublished - Jun 2024

Funding

Qi WU acknowledges the support from The CityU-JD Digits Joint Laboratory in Financial Technology and Engineering and The Hong Kong Research Grants Council [General Research Fund 11219420/9043008 and 11200219/9042900]. The work described in this paper was partially supported by the InnoHK initiative, the Government of the HKSAR, and the Laboratory for AI-Powered Financial Technologies.

RGC Funding Information

  • RGC-funded

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