因果推理深度学习入门

IF 6.5 2区 社会学 Q1 SOCIAL SCIENCES, MATHEMATICAL METHODS Sociological Methods & Research Pub Date : 2024-08-16 DOI:10.1177/00491241241234866
Bernard J. Koch, Tim Sainburg, Pablo Geraldo Bastías, Song Jiang, Yizhou Sun, Jacob G. Foster
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引用次数: 0

摘要

本入门书系统整理了在潜在结果框架下使用深度神经网络进行因果推断的新兴文献。它直观地介绍了如何构建和优化自定义深度学习模型,并展示了如何调整这些模型以估计/预测异质性治疗效果。它还讨论了将因果推理扩展到非线性、时变或以文本、网络和图像编码的混杂情况的当前工作。为了最大限度地便于读者理解,我们还介绍了因果推理和深度学习的先决概念。这本入门书与其他深度学习和因果推理的论著不同之处在于,它专注于观察性因果估计,扩展阐述了关键算法,并提供了在 TensorFlow 2 和 PyTorch 中实施、训练和选择深度估计器的详细教程。
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A Primer on Deep Learning for Causal Inference
This primer systematizes the emerging literature on causal inference using deep neural networks under the potential outcomes framework. It provides an intuitive introduction to building and optimizing custom deep learning models and shows how to adapt them to estimate/predict heterogeneous treatment effects. It also discusses ongoing work to extend causal inference to settings where confounding is nonlinear, time-varying, or encoded in text, networks, and images. To maximize accessibility, we also introduce prerequisite concepts from causal inference and deep learning. The primer differs from other treatments of deep learning and causal inference in its sharp focus on observational causal estimation, its extended exposition of key algorithms, and its detailed tutorials for implementing, training, and selecting among deep estimators in TensorFlow 2 and PyTorch.
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来源期刊
CiteScore
16.30
自引率
3.20%
发文量
40
期刊介绍: Sociological Methods & Research is a quarterly journal devoted to sociology as a cumulative empirical science. The objectives of SMR are multiple, but emphasis is placed on articles that advance the understanding of the field through systematic presentations that clarify methodological problems and assist in ordering the known facts in an area. Review articles will be published, particularly those that emphasize a critical analysis of the status of the arts, but original presentations that are broadly based and provide new research will also be published. Intrinsically, SMR is viewed as substantive journal but one that is highly focused on the assessment of the scientific status of sociology. The scope is broad and flexible, and authors are invited to correspond with the editors about the appropriateness of their articles.
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