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首页> 外文期刊>International Journal of Computational Intelligence and Applications >CLUSTER BASED ENSEMBLE CLASSIFIER GENERATION BY JOINT OPTIMIZATION OF ACCURACY AND DIVERSITY
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CLUSTER BASED ENSEMBLE CLASSIFIER GENERATION BY JOINT OPTIMIZATION OF ACCURACY AND DIVERSITY

机译:通过精度和多样性的联合优化来生成基于聚类的分类器

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This paper presents an algorithm to generate ensemble classifier by joint optimization of accuracy and diversity. It is expected that the base classifiers in an ensemble are accurate and diverse (i.e., complementary in terms of errors) among each other for the ensemble classifier to be more accurate. We adopt a multi-objective evolutionary algorithm (MOEA) for joint optimization of accuracy and diversity on our recently developed nonuniform layered cluster oriented ensemble classifier (NULCOEC). In NULCOEC, the data set is partitioned into a variable number of clusters at different layers. Base classifiers are then trained on the clusters at different layers. The performance of NULCOEC is a function of the vector of the number of layers and clusters. The research presented in this paper investigates the implication of applying MOEA to generate NULCOEC. Accuracy and diversity of the ensemble classifier is expressed as a function of layers and clusters. A MOEA then searches for the combination of layers and clusters to obtain the nondominated set of (accuracy, diversity). We have obtained the results of single objective optimization (i.e., optimizing either accuracy or diversity) and compared them with the results of MOEA on sixteen UCI data sets. The results show that the MOEA can improve the performance of ensemble classifier.
机译:本文提出了一种通过精度和多样性的联合优化来生成集成分类器的算法。期望整体中的基本分类器彼此之间准确且多样(即,在误差方面是互补的),以使整体分类器更准确。我们采用多目标进化算法(MOEA)对我们最近开发的非均匀分层面向集群的集成分类器(NULCOEC)进行准确性和多样性的联合优化。在NULCOEC中,数据集在不同层被划分为可变数量的簇。然后在不同层的集群上训练基本分类器。 NULCOEC的性能是层和簇数向量的函数。本文提出的研究调查了应用MOEA生成NULCOEC的含义。集成分类器的准确性和多样性表示为图层和群集的函数。然后,MOEA搜索层和群集的组合,以获得非支配的一组(准确性,多样性)。我们已经获得了单目标优化的结果(即优化准确性或多样性),并将其与MOEA在16个UCI数据集上的结果进行了比较。结果表明,MOEA可以提高集成分类器的性能。

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