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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >SCLS: Multi-label feature selection based on scalable criterion for large label set
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SCLS: Multi-label feature selection based on scalable criterion for large label set

机译:SCLS:基于用于大型标签集的可扩展标准的多标签功能选择

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摘要

Multi-label feature selection involves the selection of relevant features from multi-labeled datasets, resulting in a potential improvement of multi-label learning accuracy. In conventional multi-label feature selection methods, the final feature subset is obtained by identifying the features of high relevance with low redundancy. Thus, accurate score evaluation is a key factor for obtaining an effective feature subset. However, conventional methods suffer from inaccurate conditional relevance evaluation when a large number of labels are involved. As a result, irrelevant features can be a member of the final feature subset, leading to low multi-label learning accuracy. In this paper, we propose a new multi-label feature selection method. Using a scalable relevance evaluation process that evaluates conditional relevance more accurately, the proposed method significantly improves multi-label learning accuracy compared with conventional multi-label feature selection methods.
机译:多标签特征选择涉及从多标签数据集中选择相关特征,从而可能提高多标签学习的准确性。在传统的多标签特征选择方法中,最终的特征子集是通过识别具有低冗余度的高相关性特征来获得的。因此,准确的分数评估是获得有效特征子集的关键因素。然而,当涉及大量标签时,传统的方法存在条件相关性评估不准确的问题。因此,不相关的特征可能会成为最终特征子集的一员,导致多标签学习精度较低。本文提出了一种新的多标签特征选择方法。与传统的多标签特征选择方法相比,该方法采用了一种可扩展的相关性评估过程,能够更准确地评估条件相关性,显著提高了多标签学习的准确性。

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