BayesFuzzy: using a Bayesian Classifier to Induce a Fuzzy Rule Base

Estevam Hruschka, H. Camargo, M. E. Cintra, M. C. Nicoletti
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引用次数: 4

Abstract

Traditional algorithms for learning Bayesian classifiers (BCs) from data are known to induce accurate classification models. However, when using these algorithms, two main concerns should be considered: i) they require qualitative data and ii) generally the induced models are not easily comprehensible by human beings. This paper deals with the two above issues by proposing a hybrid method named BayesFuzzy that learns from quantitative data and induces a fuzzy rule based model that enhances comprehensibility. BayesFuzzy has been implemented as an automatic system that combines a fuzzy strategy, for transforming numerical data into qualitative information, with a Bayes-based approach for inducing rules. Promising empirical results of the use of the BayesFuzzy system in four knowledge domains are presented and discussed.
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贝叶斯模糊:使用贝叶斯分类器生成模糊规则库
从数据中学习贝叶斯分类器(bc)的传统算法可以产生准确的分类模型。然而,在使用这些算法时,应该考虑两个主要问题:i)它们需要定性数据,ii)一般诱导模型不容易被人类理解。针对上述两个问题,本文提出了一种名为BayesFuzzy的混合方法,该方法从定量数据中学习,并引入基于模糊规则的模型,提高了可理解性。BayesFuzzy是一个自动系统,它结合了将数值数据转换为定性信息的模糊策略和基于贝叶斯的归纳规则的方法。提出并讨论了贝叶斯模糊系统在四个知识领域应用的实证结果。
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