Estimating an individual's potential response to interventions from observational data is of high practical relevance for many domains, such as healthcare, public policy or economics. In this setting, it is often the case that combinations of interventions may be applied simultaneously, for example, multiple prescriptions in healthcare or different fiscal and monetary measures in economics. However, existing methods for counterfactual inference are limited to settings in which actions are not used simultaneously. Here, we present Neural Counterfactual Relation Estimation (NCoRE), a new method for learning counterfactual representations in the combination treatment setting that explicitly models cross-treatment interactions. NCoRE is based on a novel branched conditional neural representation that includes learnt treatment interaction modulators to infer the potential causal generative process underlying the combination of multiple treatments. Our experiments show that NCoRE significantly outperforms existing state-of-the-art methods for counterfactual treatment effect estimation that do not account for the effects of combining multiple treatments across several synthetic, semi-synthetic and real-world benchmarks.
翻译:估计个人对观察数据干预的潜在反应对于许多领域,例如保健、公共政策或经济学等,都具有高度的实际意义。在这一背景下,通常的情况是,干预的结合可以同时使用,例如保健方面的多种处方或经济方面的不同的财政和货币措施。但是,现有的反事实推断方法仅限于没有同时使用行动的环境。在这里,我们介绍了神经反反事实通货膨胀估计(NCoRE),这是一种在混合治疗设置中学习反事实表述的新方法,明确模拟交叉治疗相互作用。NCoRE基于一种新的分支有条件神经表态,包括学习治疗互动调节器,以推断多种治疗组合背后的潜在因果关系。我们的实验表明,NCoRE大大超出了现有反事实治疗效果估计的状态方法,而后者没有考虑到在若干合成、半合成和现实世界基准中结合多种治疗的效果。