Recently, conditional average treatment effect (CATE) estimation has been attracting much attention due to its importance in various fields such as statistics, social and biomedical sciences. This study proposes a partially linear nonparametric Bayes model for the heterogeneous treatment effect estimation. A partially linear model is a semiparametric model that consists of linear and nonparametric components in an additive form. A nonparametric Bayes model that uses a Gaussian process to model the nonparametric component has already been studied. However, this model cannot handle the heterogeneity of the treatment effect. In our proposed model, not only the nonparametric component of the model but also the heterogeneous treatment effect of the treatment variable is modeled by a Gaussian process prior. We derive the analytic form of the posterior distribution of the CATE and prove that the posterior has the consistency property. That is, it concentrates around the true distribution. We show the effectiveness of the proposed method through numerical experiments based on synthetic data.
翻译:最近,由于在统计、社会和生物医学等不同领域的重要性,有条件平均治疗效果(CATE)估计吸引了人们的极大关注。本研究为多种治疗效果估计提出了一个部分线性非参数性贝类模型。部分线性模型是一个半参数性模型,由线性和非参数性组成部分组成,以添加形式构成。一个非参数性贝类模型,使用高斯进程来模拟非参数性成分。然而,这一模型无法处理治疗效果的异质性。在我们拟议的模型中,不仅模型的非参数性组成部分,而且治疗变量的异质性治疗效果也由古斯进程之前的模型模型来建模。我们得出了CATE后方分布的分析形式,并证明后方具有一致性属性。也就是说,它集中于真实分布。我们通过基于合成数据的数字实验来显示拟议方法的有效性。