利用因果知识选择领域适应的治疗效果模型

Trent Kyono, I. Bica, Z. Qian, M. van der Schaar
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引用次数: 4

摘要

虽然已经开发了大量用于估计个体化治疗效果(ITE)的因果推理模型,但选择最好的模型是一个独特的挑战,因为从来没有观察到反事实。在无监督域自适应(UDA)设置中,该问题受到了进一步的挑战,在该设置中,我们可以访问源域中的标记样本,但希望选择在只有未标记样本可用的目标域上实现良好性能的ITE模型。现有的UDA选择技术是为预测模型设计的,并且对于因果推断来说是次优的,因为它们(1)不考虑遗漏的反事实,并且(2)只检查源域和目标域中输入协变量之间的判别密度比,并且不考虑模型在目标域中的预测。我们利用因果结构跨领域的不变性,引入了一种专门为UDA下的ITE模型设计的新模型选择度量。我们建议选择对干预效果的预测满足目标域中不变因果结构的模型。在实验上,我们的方法选择了对各种数据集上的协变量变化更具鲁棒性的ITE模型,包括估计新冠肺炎患者通气的影响。
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Selecting Treatment Effects Models for Domain Adaptation Using Causal Knowledge
While a large number of causal inference models for estimating individualized treatment effects (ITE) have been developed, selecting the best one poses a unique challenge, since the counterfactuals are never observed. The problem is challenged further in the unsupervised domain adaptation (UDA) setting where we have access to labeled samples in the source domain but desire selecting an ITE model that achieves good performance on a target domain where only unlabeled samples are available. Existing selection techniques for UDA are designed for predictive models and are sub-optimal for causal inference because they (1) do not account for the missing counterfactuals and (2) only examine the discriminative density ratios between the input covariates in the source and target domain and do not factor in the model’s predictions in the target domain. We leverage the invariance of causal structures across domains to introduce a novel model selection metric specifically designed for ITE models under UDA. We propose selecting models whose predictions of the effects of interventions satisfy invariant causal structures in the target domain. Experimentally, our method selects ITE models that are more robust to covariate shifts on a variety of datasets, including estimating the effect of ventilation in COVID-19 patients.
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