论文标题
深层因果模型及其工业应用的调查
A Survey of Deep Causal Models and Their Industrial Applications
论文作者
论文摘要
因果关系的概念在人类认知领域中占据了至关重要的地位。在过去的几十年中,各个学科的因果效应估计领域取得了重大进步,包括但不限于计算机科学,医学,经济学和工业应用。鉴于深度学习方法的持续发展,使用反事实数据估算因果效应的利用率显着。通常,深层因果模型将协变量的特征映射到表示空间,然后设计各种目标函数以公正地估算反事实数据。与机器学习中因果模型的现有调查不同,这篇评论主要集中于基于神经网络的深层因果模型的概述,其核心贡献如下:1)我们对来自开发时间表和方法分类视角的深入因果模型的全面概述进行了深入了解; 2)我们概述了因果效应估计到行业的一些典型应用; 3)我们还努力对相关数据集,源代码和实验进行详细的分类和分析。
The notion of causality assumes a paramount position within the realm of human cognition. Over the past few decades, there has been significant advancement in the domain of causal effect estimation across various disciplines, including but not limited to computer science, medicine, economics, and industrial applications. Given the continous advancements in deep learning methodologies, there has been a notable surge in its utilization for the estimation of causal effects using counterfactual data. Typically, deep causal models map the characteristics of covariates to a representation space and then design various objective functions to estimate counterfactual data unbiasedly. Different from the existing surveys on causal models in machine learning, this review mainly focuses on the overview of the deep causal models based on neural networks, and its core contributions are as follows: 1) we cast insight on a comprehensive overview of deep causal models from both timeline of development and method classification perspectives; 2) we outline some typical applications of causal effect estimation to industry; 3) we also endeavor to present a detailed categorization and analysis on relevant datasets, source codes and experiments.