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Reliability assessment of complex networks using rules extracted from trained ANN and SVM models

机译:使用从培训的ANN和SVM模型中提取的规则进行复杂网络的可靠性评估

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This paper describes the application of hybrid intelligent system (HIS) to extract rules from two machine learning approaches: neural networks (NN) and support vector machine (SVM). The experimentation is based on the TREPAN algorithm. TREPAN, a well-known technique developed originally to extract linguistic rules from a trained artificial neural network, is modified to cope with SVM models. An example related to the reliability assessment of a 21-links network and its excellent performance results is presented.
机译:本文介绍了混合智能系统(他)从两种机器学习方法提取规则的应用:神经网络(NN)和支持向量机(SVM)。实验基于Trepan算法。 Trepan是最初开发的众所周知的技术,以从训练有素的人工神经网络中提取语言规则,被修改为应对SVM模型。介绍了与21-Links网络的可靠性评估相关的一个例子及其出色的性能结果。

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