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Multi-label Classification with ART Neural Networks

机译:利用ART神经网络进行多标签分类

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摘要

Multi-label Classification (MC) is a classification task with instances labeled by multiple classes rather than just one. This task becomes increasingly important in such fields as gene function prediction or web-mining. Early approaches to MC were based on learning independent binary classifiers for each class and combining their outputs in order to obtain multi-label predictions. Alternatively, a classifier can be directly trained to predict a label set of an unknown size for each unseen instance. Recently, several direct multi-label learning algorithms have been proposed. This paper investigates a novel method to solve a MC task by using an Adaptive Resonance Theory (ART) neural network. A modified Fuzzy ARTMAP algorithm Multi-Label-FAM (ML-FAM) was applied to classification of multi-label data. The obtained preliminary results on the Yeast data set and their comparison with the results of existing algorithms demonstrate the effectiveness of the proposed approach.
机译:多标签分类(MC)是一种分类任务,其实例具有多个类,而不仅仅是一个类。在基因功能预测或网络挖掘等领域,这项任务变得越来越重要。早期的MC方法是基于为每个类别学习独立的二进制分类器,并将它们的输出进行组合以获得多标签预测。可替代地,可以直接训练分类器以针对每个未见实例预测未知大小的标签集。最近,已经提出了几种直接的多标签学习算法。本文研究了一种使用自适应共振理论(ART)神经网络解决MC任务的新方法。改进的模糊ARTMAP算法Multi-Label-FAM(ML-FAM)被应用于多标签数据的分类。在酵母数据集上获得的初步结果以及它们与现有算法的结果的比较证明了该方法的有效性。

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