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Oct, 2023
因果表示学习的普适可识别性与可实现性
General Identifiability and Achievability for Causal Representation Learning
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Burak Varıcı, Emre Acartürk, Karthikeyan Shanmugam, Ali Tajer
TL;DR
该研究论文主要关注于在一般非参数因果潜在模型和将潜在数据映射到观测数据的一般变换模型下的因果表示学习,通过使用潜在因果图中每个节点的两个硬解耦干预来建立可识别性和可实现性结果。
Abstract
This paper focuses on
causal representation learning
(CRL) under a general nonparametric causal latent model and a general transformation model that maps the latent data to the observational data. It establishes \textbf{
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