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A Study on Multi-label Classification

机译:多标签分类研究

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Multi-label classifications exist in many real world applications. This paper empirically studies the performance of a variety of multi-label classification algorithms. Some of them are developed based on problem transformation. Some of them are developed based on adaption. Our experimental results show that the adaptive Multi-Label K-Nearest Neighbor performs the best, followed by Random k-Label Set, followed by Classifier Chain and Binary Relevance. Adaboost.MH performs the worst, followed by Pruned Problem Transformation. Our experimental results also provide us the confidence of existing correlations among multi-labels. These insights shed light for future research directions on multi-label classifications.
机译:在许多现实应用中都存在多标签分类。本文从经验上研究了多种多标签分类算法的性能。其中一些是基于问题转换而开发的。其中一些是根据适应性开发的。我们的实验结果表明,自适应多标签K最近邻居表现最佳,其次是随机k标签集,然后是分类器链和二进制相关性。 Adaboost.MH表现最差,其次是修剪问题转换。我们的实验结果也为我们提供了多标签之间现有相关性的信心。这些见解为未来多标签分类的研究方向提供了启示。

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