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Extended Genetic Algorithm for Tuning a Multiple Classifier System

机译:用于调整多分类器系统的扩展遗传算法

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摘要

A widely accepted idea in the pattern recognition field is that a multiple classifier system use to show superior performance than individual classifiers when dealing with complex problems. Most multiple classier systems are built up from classifiers developed completely independent of each other and combined in a last step, generating possible decisions conflicts among individual classifiers. In this paper, a non standard genetic algorithm for tuning multiple classifier systems is presented. This algorithm is based on a set of concepts that extends the genetic metaphor: coevolutionary diversity, collective fitness, suitable behavior, phylogenetic evolution and ontogenetic evolution.
机译:模式识别领域的一个广泛接受的想法是,在处理复杂问题时,多分类器系统用于显示优于单个分类器的性能。大多数多个分类器系统是由彼此完全独立开发的分类器构建的,并在最后一步进行组合,从而在各个分类器之间产生可能的决策冲突。本文提出了一种用于调整多分类器系统的非标准遗传算法。该算法基于扩展遗传隐喻的一组概念:协同进化多样性,集体适应性,适当行为,系统发育进化和个体发育进化。

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