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Multi-label feature selection algorithm based on label pairwise ranking comparison transformation

机译:基于标签成对排名比较变换的多标签特征选择算法

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Multi-label classification refers to the learning problem that a single training sample possibly has multiple labels at the same time. Many real world applications consist of high-dimensional feature vectors, which generally involve some irrelevant and redundant features. This possibly reduces classification performance and increases computational costs. Therefore, feature selection becomes an indispensable pre-processing step. Nowadays filter-type feature selection algorithms based on problem transformation strategies (for example, binary relevance) have attracted more attention due to their high computational efficiency and good classification performance. In this paper, according to the definition of ranking loss, we propose a label pairwise comparison transformation method (PCT), which converts each original multi-label sample into multiple samples with same feature vectors and different label vectors. Further, when PCT is combined with chi-square statistics, we introduce a fast implementation procedure, whose time complexity is approximated to that of binary relevance method. The experimental results of four text data sets show that our proposed algorithm outperforms five existing filter-type feature selection techniques based on problem transformation strategies according to six instance-based evaluation measures.
机译:多标签分类是指单个训练样本可能同时具有多个标签的学习问题。许多现实世界的应用程序都由高维特征向量组成,这些向量通常包含一些不相关和多余的特征。这可能会降低分类性能并增加计算成本。因此,特征选择成为必不可少的预处理步骤。如今,基于问题转换策略(例如,二进制相关性)的过滤器类型特征选择算法由于其高计算效率和良好的分类性能而备受关注。在本文中,根据等级损失的定义,我们提出了一种标签成对比较转换方法(PCT),该方法将每个原始的多标签样本转换为具有相同特征向量和不同标签向量的多个样本。此外,当将PCT与卡方统计量相结合时,我们引入了一种快速的实现过程,其时间复杂度近似于二进制相关方法的时间复杂度。对四个文本数据集的实验结果表明,根据六种基于实例的评估措施,我们提出的算法优于基于问题转换策略的五种现有过滤器类型特征选择技术。

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