基于修剪贝叶斯模糊规则集的智能分类系统

I. Yin, Estevam Hruschka, H. Camargo
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引用次数: 0

摘要

利用贝叶斯/模糊协同的混合智能系统在过去几年中已经在文献中进行了探索。这种协作主要在真实的智能系统应用中发挥重要作用,其中准确性和可理解性是需要考虑的关键方面。本文进一步探讨了贝叶斯模糊方法,提出了一种专门用于智能系统数据分析的分类方法。其主要思想是通过减少用于解释贝叶斯分类器(BC)的模糊规则的数量来提高可理解性,同时保持准确性。提出的修剪贝叶斯模糊2 (PBF2)方法是基于一种新的特征选择方法——马尔可夫毯关系强度选择(SMBRS)。在所进行的实验中,PBF2被经验地应用于现实世界的警察记录问题,以提取一套可理解和准确的规则,有助于预防犯罪。结果表明,与其他基于贝叶斯/模糊的方法和C4.5算法相比,在适当的参数下使用PBF2具有更好的精度和可理解性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Classification System Using a Pruned Bayes Fuzzy Rule Set
Hybrid intelligent systems which take advantage of the Bayesian/Fuzzy collaboration have been explored in the literature in the last years. Such collaboration can play an important role mainly in real intelligent systems applications, where accuracy and comprehensibility are crucial aspects to be considered. This paper further explore the Bayes Fuzzy method proposing a classification method specially designed to be used in intelligent systems for data analysis. The main idea is to enhance comprehensibility while maintaining accuracy by decreasing the number of fuzzy rules used to explain a Bayesian Classifier (BC). The proposed Pruned Bayes Fuzzy 2 (PBF2) method is based on a new feature selection method named Selection by Markov Blanket Relation Strength (SMBRS). In the performed experiments, PBF2 is empirically applied to a real world police records problem in order to extract a comprehensible and accurate set of rules which can help in crime prevention. The obtained results show PBF2, when used with proper parameters, brings better precision and comprehensibility compared to other Bayesian/Fuzzy-based methods and to C4.5 algorithm.
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