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Feature Selection for Multi-Label Learning Based on F-Neighborhood Rough Sets

机译:基于F邻域粗集的多标签学习功能选择

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摘要

Multi-label learning is often applied to handle complex decision tasks, and feature selection is its essential part. The relation of labels is always ignored or not enough to consider for both multi-label learning and its feature selection. To deal with the problem, F-neighborhood rough sets are employed. Different from other methods, the original approximate space is not changed, but the relation of labels is sufficient to consider. To be specific, a multi-label decision system is discomposed into a family of single-label decision tables with the label set(first-order strategy) at first. Secondly, calculate attribute significance in the family of single-label decision tables. Third, construct an attribute significance matrix and improved attribute significance matrices to evaluate the quality of the features, then a parallel reduct is obtained with information fusion. These processes construct F-neighborhood parallel reduction algorithm for a multi-label decision system(FNPRMS). Compared with the state-of-the-arts, experimental results show that FNPRMS is effective and efficient on 9 publicly available data sets.
机译:多标签学习通常应用于处理复杂的决策任务,并且功能选择是其重要组成部分。标签的关系总是忽略或不足以考虑多标签学习及其特征选择。要处理问题,采用F邻域粗糙集。与其他方法不同,原始近似空间不会改变,但标签的关系足以考虑。具体而言,多标签决策系统首先与标签集(一阶策略)失真到一个单一标签决策表中。其次,计算单标签决策表系列的属性意义。第三,构造属性意义矩阵和改进的属性意义矩阵以评估特征的质量,然后通过信息融合获得并行硬化。这些过程构造用于多标签决策系统(FNPRMS)的F邻域并行减小算法。与最先进的实验结果相比,实验结果表明,FNPRMS在9个公共数据集中有效和有效。

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