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An evaluation of global-model hierarchical classification algorithms for hierarchical classification problems with single path of labels

机译:具有单标签路径的层次分类问题的全局模型层次分类算法的评估

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摘要

Several classification tasks in different application domains can be seen as hierarchical classification problems. In order to deal with hierarchical classification problems, the use of existing flat classification approaches is not appropriate. For these reason, there has been a growing number of studies focusing on the development of novel algorithms able to induce classification models for hierarchical classification problems. In this paper we study the performance of a novel algorithm called Hierarchical Classification using a Competitive Neural Network (HC-CNN) and compare its performance against the Global-Model Naieve Bayes (GMNB) on eight protein function prediction datasets. Interestingly enough, the comparison of two global-model hierarchical classification algorithms for single path of labels hierarchical classification problems has never been done before.
机译:不同应用领域中的几个分类任务可以看作是层次分类问题。为了处理分层分类问题,不适合使用现有的平面分类方法。由于这些原因,已经有越来越多的研究集中在能够为分层分类问题引入分类模型的新型算法的开发上。在本文中,我们使用竞争性神经网络(HC-CNN)研究了一种称为“层次分类”的新算法的性能,并在八个蛋白质功能预测数据集上将其与全球模型Naieve Bayes(GMNB)的性能进行了比较。有趣的是,从未针对标签分层分类问题的单个路径对两种全局模型分层分类算法进行比较。

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