This paper describes an extension of a symbolic knowledge extraction approach for Linear Support Vector Machine [1]. The proposed method retrieves a set of concise and interpretable IF-THEN rules from a novel polytope classifier, which can be described as a Piecewise-Linear Support Vector Machine with the successful application for linearly non-separable classification problems. Recent major achievements in rule extraction for kernelized classifiers left some reasonable and unresolved problems in knowledge discovery from nonlinear SVMs. The most comprehensible methods imply constraints that strictly enforce convexity of the searched-through half-space of inducted SVM classifier [2]. Obviously non-convex hyper-surfaces couldn't be effectively described by a finite set of IF-THEN rules without violating bounds of a constrained non-convex area. In this paper we describe two different approaches for "learning" a polytope classifier. One of them uses Multi-Surface Method Tree [3] to generate decision half-spaces, while the other one enables clustering-based decomposition of target classes and initiates a separate Linear SVM for every pair of clusters. We claim that the proposed polytope classifier achieves classification rates comparable to a nonlinear SVM and corresponding rule extraction approach helps to extract better rules from linearly non-separable cases in comparison with decision trees and C4.5 rule extraction algorithm.
[1]
Artur S. d'Avila Garcez,et al.
Symbolic Knowledge Extraction from Support Vector Machines: A Geometric Approach
,
2008,
ICONIP.
[2]
Andreu Català,et al.
Rule extraction from support vector machines
,
2002,
ESANN.
[3]
Olvi L. Mangasarian,et al.
Mathematical Programming in Neural Networks
,
1993,
INFORMS J. Comput..
[4]
A. Asuncion,et al.
UCI Machine Learning Repository, University of California, Irvine, School of Information and Computer Sciences
,
2007
.
[5]
Vladimir N. Vapnik,et al.
The Nature of Statistical Learning Theory
,
2000,
Statistics for Engineering and Information Science.
[6]
S. P. Lloyd,et al.
Least squares quantization in PCM
,
1982,
IEEE Trans. Inf. Theory.
[7]
Glenn Fung,et al.
Rule extraction from linear support vector machines
,
2005,
KDD '05.