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Improving the Performance of Hierarchical Classification with Swarm Intelligence

机译:利用群体智能提高层次分类的性能

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In this paper we propose a new method to improve the performance of hierarchical classification. We use a swarm intelligence algorithm to select the type of classification algorithm to be used at each "classifier node" in a classifier tree. These classifier nodes are used in a top-down divide and conquer fashion to classify the examples from hierarchical data sets. In this paper we propose a swarm intelligence based approach which attempts to mitigate a major drawback with a recently proposed local search-based, greedy algorithm. Our swarm intelligence based approach is able to take into account classifier interactions whereas the greedy algorithm is not. We evaluate our proposed method against the greedy method in four challenging bioinformatics data sets and find that, overall, there is a significant increase in performance.
机译:在本文中,我们提出了一种提高层次分类性能的新方法。我们使用群体智能算法来选择分类器树中每个“分类器节点”要使用的分类算法的类型。这些分类器节点以自上而下的划分和征服方式用于对分层数据集中的示例进行分类。在本文中,我们提出了一种基于群体智能的方法,该方法试图缓解最近提出的基于局部搜索的贪婪算法的主要缺点。我们的基于群体智能的方法能够考虑分类器的相互作用,而贪婪算法则不能。我们在四个具有挑战性的生物信息学数据集中针对贪婪方法评估了我们提出的方法,发现总体上,性能有了显着提高。

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