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Reasoning of Causal Direction in Linear Model Based on Spearman's Rank Correlation Coefficient

机译:基于Spearman等级相关系数的线性模型中因果方向的推理

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Currently, the mining of causality has drawn enormous attention in artificial intelligence. The paper mainly focuses on the causal direction inference problem from an observational sample of the joint distribution in a linear model where the data contain less asymmetric information compared to nonlinear situation. The paper studies the linear additive noise model and analyses the inferring conditions for linear causal direction inference. This paper proposes the copula for modeling dependence and presents a new causal inference method based on Spearman's rank correlation coefficient. The performance of the proposed method is verified through the experiments and analysis on both simulated data and real-world data.
机译:目前,因果关系的采矿在人工智能中引起了巨大的关注。本文主要集中在与非线性情况相比,数据包含较少的非线性信息的线性模型中的接头分布的观察样本的因果方向推理问题。本文研究了线性添加剂噪声模型,分析了线性因果方向推断的推断条件。本文提出了用于建模依赖性的谱系,并提出了一种基于Spearman等级相关系数的新因果推断方法。通过模拟数据和现实世界数据的实验和分析来验证所提出的方法的性能。

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