论文标题

深层因果学习:代表,发现和推理

Deep Causal Learning: Representation, Discovery and Inference

论文作者

Deng, Zizhen, Zheng, Xiaolong, Tian, Hu, Zeng, Daniel Dajun

论文摘要

近年来,因果学习引起了极大的关注,因为它揭示了基于现象的基本关系,并描述了世界发展的机制。然而,传统的因果学习方法面临许多挑战和局限性,包括高维,非结构化变量,组合优化问题,未观察到的混杂因素,选择偏见和估计不准确。充分利用深层神经网络的深层因果学习为解决这些挑战提供了创新的见解和解决方案。尽管已经提出了许多基于深度学习的因果发现和推理的方法,但仍缺乏评论,研究了深度学习可以增强因果学习的基本机制。在本文中,我们全面回顾了深度学习如何通过在三个关键维度上应对传统挑战来为因果学习做出贡献:表示,发现和推理。我们强调,深层因果学习对于推进理论前沿和扩大因果科学的实际应用至关重要。我们通过总结了开放问题并概述了未来研究的潜在方向。

Causal learning has garnered significant attention in recent years because it reveals the essential relationships that underpin phenomena and delineates the mechanisms by which the world evolves. Nevertheless, traditional causal learning methods face numerous challenges and limitations, including high-dimensional, unstructured variables, combinatorial optimization problems, unobserved confounders, selection biases, and estimation inaccuracies. Deep causal learning, which leverages deep neural networks, offers innovative insights and solutions for addressing these challenges. Although numerous deep learning-based methods for causal discovery and inference have been proposed, there remains a dearth of reviews examining the underlying mechanisms by which deep learning can enhance causal learning. In this article, we comprehensively review how deep learning can contribute to causal learning by tackling traditional challenges across three key dimensions: representation, discovery, and inference. We emphasize that deep causal learning is pivotal for advancing the theoretical frontiers and broadening the practical applications of causal science. We conclude by summarizing open issues and outlining potential directions for future research.

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