Observational studies have recently received significant attention from the machine learning community due to the increasingly available non-experimental observational data and the limitations of the experimental studies, such as considerable cost, impracticality, small and less representative sample sizes, etc. In observational studies, de-confounding is a fundamental problem of individualised treatment effects (ITE) estimation. This paper proposes disentangled representations with adversarial training to selectively balance the confounders in the binary treatment setting for the ITE estimation. The adversarial training of treatment policy selectively encourages treatment-agnostic balanced representations for the confounders and helps to estimate the ITE in the observational studies via counterfactual inference. Empirical results on synthetic and real-world datasets, with varying degrees of confounding, prove that our proposed approach improves the state-of-the-art methods in achieving lower error in the ITE estimation.
翻译:最近,由于越来越多的非实验性观测数据和实验研究的局限性,例如费用高昂、不切实际、抽样规模较小和代表性较小等等,观察研究界对观测研究给予了极大关注。 在观察研究中,分解是个人化治疗效果(ITE)估计的一个根本问题。本文件建议与对抗性培训进行分解的表述,有选择地平衡ITE估计二进制治疗环境中的共进者。对治疗政策进行对抗性培训,有选择地鼓励对混淆者进行治疗-认知性均衡的表述,并通过反事实推断帮助估计观察研究中的ITE。合成和真实世界数据集的经验结果,不同程度的混杂,证明我们提出的方法改进了在ITE估计中实现较低误差方面的最新方法。