Ensemble method based on individual evolving classifiers

J. A. Iglesias, Agapito Ledezma, A. Sanchis
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引用次数: 12

Abstract

Humans often seek a second or third opinion about an important matter. Then, a final decision is reached after weighing and combining these opinions. This idea is the base of the ensemble based systems. Ensembles of classifiers are well established as a method for obtaining highly accurate classifiers by combining less accurate ones. On the other hand, evolving classifiers are inspired by the idea of evolve their structure in order to adapt to the changes of the environment. In this paper, we present a proof-of-concept method for constructing an ensemble system based on Evolving Fuzzy Systems. The main contribution of this approach is that the base-classifiers are self-developing (evolving) Fuzzy-rule-based (FRB) classifiers. Thus, we present an ensemble system which is based on evolving classifiers and keeps the properties of the evolving approach classification of streaming data. It is important to clarify that the evolving classifiers are gradually developing but they are not genetic or evolutionary.
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基于个体进化分类器的集成方法
人们经常在重要的事情上寻求第二或第三个意见。然后,在权衡和综合这些意见后做出最终决定。这个思想是基于集成的系统的基础。分类器集成是一种通过组合不太准确的分类器来获得高精度分类器的方法。另一方面,进化分类器的灵感来自于进化其结构以适应环境变化的想法。本文提出了一种基于演化模糊系统构造集成系统的概念验证方法。这种方法的主要贡献是基本分类器是自我发展(进化)的基于模糊规则(FRB)分类器。因此,我们提出了一种基于进化分类器的集成系统,并保持了流数据进化分类方法的特性。重要的是要澄清,进化的分类器是逐渐发展的,但它们不是遗传的或进化的。
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