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A k-nearest neighbor based algorithm for multi-label classification

机译:基于k最近邻的多标签分类算法

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In multi-label learning, each instance in the training set is associated with a set of labels, and the task is to output a label set whose size is unknown a priori for each unseen instance. In this paper, a multi-label lazy learning approach named ML-kNN is presented, which is derived from the traditional k-nearest neighbor (kNN) algorithm. In detail, for each new instance, its k-nearest neighbors are firstly identified. After that, according to the label sets of these neighboring instances, maximum a posteriori (MAP) principle is utilized to determine the label set for the new instance. Experiments on a real-world multi-label bioinformatic data show that ML-kNN is highly comparable to existing multi-label learning algorithms.
机译:在多标签学习中,训练集中的每个实例都与一组标签相关联,并且任务是针对每个看不见的实例输出一个先验未知大小的标签集。本文提出了一种从传统的k最近邻算法(kNN)派生而来的多标签惰性学习方法ML-kNN。详细地,对于每个新实例,首先确定其k最近邻居。此后,根据这些相邻实例的标签集,最大后验(MAP)原理用于确定新实例的标签集。在现实世界中的多标签生物信息学数据上的实验表明,ML-kNN与现有的多标签学习算法具有高度的可比性。

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