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Ensembles of diverse classifiers using synthetic training data

机译:使用综合训练数据的各种分类器的集合

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The goal of an ensemble construction with several classifiers is to achieve better generalization than that of a single classifier. And proper diversity among classifiers is considered as the condition for an ensemble construction. This paper investigates synthetic pattern for diversity among classifiers. It alters input feature values of some patterns with the values of other patterns to get synthetic patterns. The pattern generation from using exiting patterns seems emphasize both accuracy and diversity among individual classifiers. Ensemble based on the synthetic patterns is evaluated for both neural networks and decision trees on a set of benchmark problems and was found to show good generalization ability.
机译:具有多个分类器的整体构造的目标是获得比单个分类器更好的概括性。分类器之间适当的多样性被认为是整体构建的条件。本文研究了分类器之间多样性的综合模式。它将某些模式的输入特征值更改为其他模式的值,以获得合成模式。使用现有模式生成模式似乎强调了各个分类器之间的准确性和多样性。基于合成模式的集成针对一组基准问题评估了神经网络和决策树,并显示出良好的概括能力。

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