建立影响图的联系主义方法

A.M.C. Machado, M. Campos
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引用次数: 0

摘要

自适应系统的发展必须面对识别作为学习和知识的协同作用的问题。本文提出了一种利用反向传播神经网络构造影响图的方法,结合了这些方法的主要优点。简要回顾了影响图和神经网络的基本概念。提出了一种提取网络条件概率的算法,并通过三个模式识别实例进行了说明。尽管在网络的训练阶段,样本集中的许多先验信息会丢失,但可以构建一个作为原始知识来源的影响图。
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A connectionist approach for building influence diagrams
The development of adaptive systems must face the problem of recognition as a synergy of learning and knowledge. This paper presents a method for constructing influence diagrams from backpropagation neural networks, as a way of combining the main advantages of these methodologies. The basic concepts of influence diagrams and neural networks are discussed as a brief review. An algorithm to extract the conditional probabilities of the network is presented and illustrated by three pattern recognition examples. Although much of the a priori information from the sample set is lost during the training phase of the network, an influence diagram that behaves as the original knowledge source can be constructed.
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