Over the past few decades, a number of methods have been proposed for causal effect estimation, yet few have been demonstrated to be effective in handling data with complex structures, such as images. To fill this gap, we propose a Causal Multi-task Deep Ensemble (CMDE) framework to learn both shared and group-specific information from the study population and prove its equivalence to a multi-task Gaussian process (GP) with coregionalization kernel a priori. Compared to multi-task GP, CMDE efficiently handles high-dimensional and multi-modal covariates and provides pointwise uncertainty estimates of causal effects. We evaluate our method across various types of datasets and tasks and find that CMDE outperforms state-of-the-art methods on a majority of these tasks.
翻译:在过去几十年中,为估计因果关系提出了若干方法,然而,事实证明在利用图像等复杂结构处理数据方面行之有效的方法很少。为填补这一空白,我们提议了一个Causal多任务深团(CMDE)框架,以便从研究人群中学习共享和特定群体的信息,并证明其等同于具有先验共同区域核心的多任务高斯进程(GP)。与多任务GP相比,CMDE有效地处理高维和多模式的共变体,并提供关于因果关系的点性不确定估计。我们评估了我们跨越各类数据集和任务的方法,发现CMDE在大多数这些任务上优于最新方法。