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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >Generalized Analytic Rule Extraction for feedforward neural networks
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Generalized Analytic Rule Extraction for feedforward neural networks

机译:前馈神经网络的广义解析规则提取

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摘要

We suggest the Input-Network-Training-Output-Extraction-Knowledge framework to classify existing rule extraction algorithms for feedforward neural networks. Based on the suggested framework, we identify the major practices of existing algorithms as relying on the technique of generate and test, which leads to exponential complexity, relying on specialized network structure and training algorithms, which leads to limited applications and reliance on the interpretation of hidden nodes, which leads to proliferation of classification rules and their incomprehensibility. In order to generalize the applicability of rule extraction, we propose the rule extraction algorithm Generalized Analytic Rule Extraction (GLARE), and demonstrate its efficacy by comparing it with neural networks per se and the popular rule extraction program for decision trees, C4.5.
机译:我们建议使用Input-Network-Training-Output-Extraction-Knowledge框架对前馈神经网络的现有规则提取算法进行分类。根据建议的框架,我们将现有算法的主要实践识别为依赖于生成和测试技术,这将导致指数复杂性,依赖于专门的网络结构和训练算法,这将导致有限的应用程序以及对解释的依赖隐藏的节点,导致分类规则的泛滥及其不可理解性。为了概括规则提取的适用性,我们提出了规则提取算法广义分析规则提取(GLARE),并通过将其与神经网络本身以及流行的决策树规则提取程序C4.5进行比较来证明其有效性。

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