Causal Inference Meets Deep Learning: A Comprehensive Survey.

IF 11 1区 综合性期刊 Q1 Multidisciplinary Research Pub Date : 2024-09-10 DOI:10.34133/research.0467
Licheng Jiao,Yuhan Wang,Xu Liu,Lingling Li,Fang Liu,Wenping Ma,Yuwei Guo,Puhua Chen,Shuyuan Yang,Biao Hou
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Abstract

Deep learning relies on learning from extensive data to generate prediction results. This approach may inadvertently capture spurious correlations within the data, leading to models that lack interpretability and robustness. Researchers have developed more profound and stable causal inference methods based on cognitive neuroscience. By replacing the correlation model with a stable and interpretable causal model, it is possible to mitigate the misleading nature of spurious correlations and overcome the limitations of model calculations. In this survey, we provide a comprehensive and structured review of causal inference methods in deep learning. Brain-like inference ideas are discussed from a brain-inspired perspective, and the basic concepts of causal learning are introduced. The article describes the integration of causal inference with traditional deep learning algorithms and illustrates its application to large model tasks as well as specific modalities in deep learning. The current limitations of causal inference and future research directions are discussed. Moreover, the commonly used benchmark datasets and the corresponding download links are summarized.
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因果推理与深度学习:全面调查。
深度学习依靠从大量数据中学习来生成预测结果。这种方法可能会无意中捕捉到数据中虚假的相关性,导致模型缺乏可解释性和稳健性。研究人员在认知神经科学的基础上开发出了更深入、更稳定的因果推理方法。通过用稳定、可解释的因果模型取代相关模型,可以减轻虚假相关的误导性,克服模型计算的局限性。在这份调查报告中,我们对深度学习中的因果推理方法进行了全面而有条理的回顾。文章从大脑启发的角度讨论了类脑推理思想,并介绍了因果学习的基本概念。文章介绍了因果推理与传统深度学习算法的整合,并说明了其在大型模型任务中的应用以及深度学习中的特定模式。文章还讨论了因果推理目前的局限性和未来的研究方向。此外,还总结了常用的基准数据集和相应的下载链接。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Research
Research Multidisciplinary-Multidisciplinary
CiteScore
13.40
自引率
3.60%
发文量
0
审稿时长
14 weeks
期刊介绍: Research serves as a global platform for academic exchange, collaboration, and technological advancements. This journal welcomes high-quality research contributions from any domain, with open arms to authors from around the globe. Comprising fundamental research in the life and physical sciences, Research also highlights significant findings and issues in engineering and applied science. The journal proudly features original research articles, reviews, perspectives, and editorials, fostering a diverse and dynamic scholarly environment.
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