Estimating individualized treatment effects (ITEs) from observational data is crucial for decision-making. In order to obtain unbiased ITE estimates, a common assumption is that all confounders are observed. However, in practice, it is unlikely that we observe these confounders directly. Instead, we often observe noisy measurements of true confounders, which can serve as valid proxies. In this paper, we address the problem of estimating ITE in the longitudinal setting where we observe noisy proxies instead of true confounders. To this end, we develop the Deconfounding Temporal Autoencoder, a novel method that leverages observed noisy proxies to learn a hidden embedding that reflects the true hidden confounders. In particular, the DTA combines a long short-term memory autoencoder with a causal regularization penalty that renders the potential outcomes and treatment assignment conditionally independent given the learned hidden embedding. Once the hidden embedding is learned via DTA, state-of-the-art outcome models can be used to control for it and obtain unbiased estimates of ITE. Using synthetic and real-world medical data, we demonstrate the effectiveness of our DTA by improving over state-of-the-art benchmarks by a substantial margin.
翻译:从观察数据中估算个人化治疗效果(ITE)对于决策至关重要。为了获得公正的 ITE 估计,一个共同的假设是,所有混乱者都会观察到。然而,在实践中,我们不可能直接观察这些混乱者。相反,我们经常看到对真正的混淆者进行噪音测量,这可以作为有效的代理人。在本文中,我们处理在纵向环境中估计ITE(ITE)的问题,在那里,我们观察到噪音的代理人而不是真正的混凝土者。为此,我们开发了“沉积的Temonfounding Temal Autoencoder”,这是一种新颖的方法,它利用观察到的噪音代理人来学习隐藏的嵌入,这反映了真正的隐藏的混淆者。特别是,DTA将长期的短期记忆自动编码与因果关系罚款结合起来,使潜在结果和治疗任务有条件地独立,因为所学的隐蔽性嵌入。一旦通过DTA学会隐藏的嵌入,就可使用“最先进的结果模型”来控制并获得对ITE的公正估计。我们用一个合成和真实的医疗基点改进了D-TA的状态。我们的国家数据展示了对DTA的效能。