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Symbolic Knowledge Extraction from Support Vector Machines: A Geometric Approach

机译:从支持向量机中提取符号知识:一种几何方法

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This paper presents a new approach to rule extraction from Support Vector Machines (SVMs). SVMs have been applied successfully in many areas with excellent generalization results; rule extraction can offer explanation capability to SVMs. We propose to approximate the SVM classification boundary by solving an optimization problem through sampling and querying followed by boundary searching, rule extraction and post-processing. A theorem and experimental results then indicate that the rules can be used to validate the SVM with high accuracy and very high fidelity.
机译:本文提出了一种从支持向量机(SVM)提取规则的新方法。 SVM已成功应用于许多领域,并具有出色的泛化效果;规则提取可以为SVM提供解释功能。我们建议通过采样和查询,然后进行边界搜索,规则提取和后处理来解决优化问题,从而对SVM分类边界进行近似估计。一个定理和实验结果表明,该规则可用于以高精度和非常高的保真度验证SVM。

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