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A Causal Model Using Self-Organizing Maps

机译:使用自组织映射的因果模型

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摘要

Understanding causality is very important for problem solving in many areas. However, conducting causal analysis for multivariate and nonlinear data, unlabeled in nature, still faces many problems with existing methods. Artificial Neural Networks have been developed for such data analyses and Backpropagation Network has been most used to learn the relationships between causes and effects. However, its supervised and black-boxed learning structure for labeled data often limits modeling and reasoning of uncertain, graded and fuzzy causality through the network. In this paper, an approach for analyzing such causality is proposed by networking Self-Organizing Maps handling unlabeled data. A new weighting scheme on connection weight vector similarity is developed to approximate conditional distributions of data in order to capture the indeterminate nature of causality. The experiments demonstrate that the method well approximates conditional output distributions for given inputs and allows estimating causal effects based on the similarity weight distributions.
机译:了解因果关系对于解决许多领域的问题非常重要。然而,对本质上未标记的多元和非线性数据进行因果分析,现有方法仍然面临许多问题。已经开发了用于这种数据分析的人工神经网络,并且反向传播网络最常用于了解因果关系。但是,其用于标记数据的受监督的黑匣子学习结构通常会限制通过网络进行的不确定,分级和模糊因果关系的建模和推理。在本文中,通过联网处理未标记数据的自组织图提出了一种分析这种因果关系的方法。为了捕获因果关系的不确定性质,开发了一种新的连接权重向量相似性加权方案,以近似数据的条件分布。实验表明,该方法很好地近似了给定输入的条件输出分布,并允许基于相似性权重分布估计因果效应。

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