基于模糊规则的分类系统中的属性重组

A. Borgi, Rim Kalaï, H. Zgaya
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引用次数: 4

摘要

在基于模糊规则的分类系统中,大量的预测属性会导致生成的规则数量激增,从而影响学习算法的精度。因此,特征数量的增加会降低基于模糊规则的分类系统的预测能力。在本文中,我们提出了一种自动生成模糊分类规则的监督学习方法,称为SIFCO。该方法适用于高维模式分类问题的表示和预测。这一特征是通过对训练集元素间的相关性研究来研究属性重组而得到的。这种方法经过实验验证,保证了在不改变太多好的分类率的情况下,大大减少了规则数量。为了将SIFCO与其他基于规则的学习方法进行比较,我们对各种数据进行了多次经验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attributes regrouping in fuzzy rule based classification systems
In fuzzy rule based classification systems, a high number of predictive attributes leads to an explosion of the number of generated rules and can affect the learning algorithm precision. Thus, the increase of the number of features can degrade the predictive capacity of the fuzzy rule based classification systems. In this article, we propose a supervised learning method by automatic generation of fuzzy classification rules, entitled SIFCO. This method is adapted to the representation and the prediction of high-dimensional pattern classification problems. This characteristic is obtained by studying the attributes regrouping by correlation research among the training set elements. This approach, checked experimentally, guarantees an important reduction of rules number without altering too much good classification rates. Several experiences were carried out on various data in order to compare SIFCO with other rules based learning methods.
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