The concept of causality plays an important role in human cognition . In the past few decades, causal inference has been well developed in many fields, such as computer science, medicine, economics, and education. With the advancement of deep learning techniques, it has been increasingly used in causal inference against counterfactual data. Typically, deep causal models map the characteristics of covariates to a representation space and then design various objective optimization functions to estimate counterfactual data unbiasedly based on the different optimization methods. This paper focuses on the survey of the deep causal models, and its core contributions are as follows: 1) we provide relevant metrics under multiple treatments and continuous-dose treatment; 2) we incorporate a comprehensive overview of deep causal models from both temporal development and method classification perspectives; 3) we assist a detailed and comprehensive classification and analysis of relevant datasets and source code.
翻译:因果关系概念在人类认知中起着重要作用。在过去几十年中,在计算机科学、医学、经济学和教育等许多领域,因果推断得到了很好的发展。随着深层次学习技术的进步,这一概念越来越多地用于对反事实数据的因果推断。通常,深层次因果模型将共变体的特征映射成一个代表空间,然后设计各种客观优化功能,以便根据不同的优化方法对反事实数据作出不偏袒的估计。本文件侧重于对深层因果模型的调查,其核心贡献如下:(1) 我们提供了多种治疗和连续剂量治疗的相关指标;(2) 我们从时间开发和方法分类角度对深层因果模型进行了全面的概述;(3) 我们协助对相关数据集和源代码进行详细和全面的分类和分析。