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Generating diverse and accurate classifier ensembles using multi-objective optimization

机译:使用多目标优化生成多样且准确的分类器集合

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Accuracy and diversity are two vital requirements for constructing classifier ensembles. Previous work has achieved this by sequentially selecting accurate ensemble members while maximizing the diversity. As a result, the final diversity of the members in the ensemble will change. In addition, little work has been reported on discussing the trade-off between accuracy and diversity of classifier ensembles. This paper proposes a method for generating ensembles by explicitly maximizing classification accuracy and diversity of the ensemble together using a multi-objective evolutionary algorithm. We analyze the Pareto optimal solutions achieved by the proposed algorithm and compare them with the accuracy of single classifiers. Our results show that by explicitly maximizing diversity together with accuracy, we can find multiple classifier ensembles that outperform single classifiers. Our results also indicate that a combination of proper methods for creating and measuring diversity may be critical for generating ensembles that reliably outperform single classifiers.
机译:准确性和多样性是构造分类器集成的两个重要要求。先前的工作是通过顺序选择准确的合奏成员同时最大化多样性来实现的。结果,集合中成员的最终多样性将发生变化。此外,关于分类器集成的准确性和多样性之间的折衷讨论的报道很少。本文提出了一种通过使用多目标进化算法显着最大化分类精度和集合多样性来生成集合的方法。我们分析了该算法所实现的帕累托最优解,并将其与单个分类器的准确性进行了比较。我们的结果表明,通过显着最大化多样性和准确性,我们可以找到优于单个分类器的多个分类器集合。我们的结果还表明,创建和测量多样性的适当方法的组合对于生成可靠地胜过单个分类器的合奏可能至关重要。

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