一种训练模式子集选择的增强算法

T. Nakashima, G. Nakai, H. Ishibuchi
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引用次数: 0

摘要

针对模式分类问题,提出了一种基于模糊规则系统的增强算法。在该算法中,基于少量训练模式的模糊规则分类系统被逐步构建。根据与训练模式相关联的权重选择训练模式子集,用于构建基于模糊规则的分类系统。当一个训练模式被多次正确分类时,它的权重就会很高。另一方面,对于那些多次被错误分类的训练模式,分配的权重较低。将低权重的训练模式包含在训练模式的子集中,用于构建单一的基于模糊规则的分类系统。我们从每个类中选择相同数量的训练模式,从而使不同类之间的训练模式数量偏差最小化。在计算机模拟中,我们研究了基于模糊规则的分类系统的增强算法在几个现实世界模式分类问题上的性能。
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A boosting algorithm with subset selection of training patterns
This paper proposes a boosting algorithm of fuzzy rule-based systems for pattern classification problems. In the proposed algorithm, several fuzzy rule-based classification systems are incrementally constructed from a small number of training patterns. A subset of training patterns for constructing a fuzzy rule-based classification system is chosen according to weights associated to them. The weight for a training pattern is high when it is correctly classified many times. On the other hand, a low weight is assigned to those training patterns that are misclassified many times. Training patterns with a low weight are included in a subset of training patterns for constructing a single fuzzy rule-based classification system. We select the same number of training patterns from each class so that the bias in the number of training patterns among different classes is minimized. In computer simulations, we examine the performance of the boosting algorithm for the fuzzy rule-based classification systems on several real-world pattern classification problems.
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