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A multi-label classification using KNN and FP-growth techniques

机译:使用KNN和FP-GRANGS技术的多标签分类

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In this paper we propose a new approach combines KNN method with FP-growth algorithm for identification and modeling existing dependencies between labels (ML-FKNN). We define and develop an algorithm that, first, utilize FP-growth algorithm for generating the association rules to identifies dependencies among the labels, then divides the whole train set into several mutually exclusive subsets to calculate the mean vectors of the each subset, and selects K nearest label neighbors for test instance by calculating its similarity with the mean vectors of the training subsets, and finally identifies the final predicted label set incorporating the discovered dependencies. Empirical evaluations on benchmark datasets shows that the proposed approach achieves high and stable accuracy results and is competitive with some existing methods for multi-label classification.
机译:在本文中,我们提出了一种新方法,将KNN方法与FP-Grangic算法相结合,以识别和建模标签(ML-FKNN)之间的现有依赖性。我们定义和开发一种算法,首先利用FP-Grower算法来生成关联规则来识别标签之间的依赖性,然后将整个列车划分为几个互斥子集,以计算每个子集的均值矢量,并选择K最近的标签邻居是测试实例,通过计算其与训练子集的平均矢量相似性,最后识别包含所发现的依赖项的最终预测标签集。基准数据集的实证评估表明,该方法实现了高且稳定的准确度结果,并竞争了一些现有的多标签分类方法。

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