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Feature selection with missing labels based on label compression and local feature correlation

机译:具有基于标签压缩和本地特征相关性的缺少标签的功能选择

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摘要

Feature selection can efficiently alleviate the issue of curse of dimensionality, especially for multi-label data with multiple features to embody diverse semantics. Although many supervised feature selection methods have been proposed, they generally assume the labels of training data are complete, whilst we only have data with incomplete labels in many real applications. Some methods try to select features with missing labels of training data, they still can not handle feature selection with a large and sparse label space. In addition, these approaches focus on global feature correlations, but some feature correlations are local and shared by a subset of data. In this paper, we introduce an approach called Feature Selection with missing labels based on Label Compression and Local feature Correlation (FSLCLC for short). FSLCLC adopts the low-rank matrix factorization on the sparse sample-label association matrix to compress labels and recover the missing labels in the compressed label space. In addition, it utilizes sparsity regularization and local feature correlation induced manifold regularizations to select the discriminative features. To solve the joint optimization objective for label compression, recovering missing labels and feature selection, we develop an iterative algorithm with guaranteed convergence. Experimental results on benchmark datasets show that the proposed FSLCLC outperforms the state-of-the-art multi-label feature selection algorithms. (C) 2020 Elsevier B.V. All rights reserved.
机译:功能选择可以有效地缓解维度的诅咒问题,特别是对于具有多个功能的多标签数据来体现各种语义。虽然已经提出了许多监督特征选择方法,但它们通常假设训练数据的标签完整,而我们只有许多真实应用中只有具有不完整标签的数据。有些方法尝试选择具有缺少培训数据标签的功能,它们仍然无法处理具有大而稀疏标签空间的功能选择。此外,这些方法侧重于全局特征相关性,但是一些特征相关性是本地的,并且由数据子集共享。在本文中,我们介绍了一种称为特征选择的方法,该方法基于标签压缩和本地特征相关性的缺失标签(FSLCLC短)。 FSLCLC采用稀疏样本标签关联矩阵上的低级矩阵分解,以压缩标签并恢复压缩标签空间中的缺失标签。此外,它利用稀疏性正则化和本地特征相关感应歧管规范化来选择辨别特征。为了解决标签压缩的联合优化目标,恢复缺失标签和特征选择,我们开发了一种具有保证融合的迭代算法。基准数据集的实验结果表明,所提出的FSLCLC优于最先进的多标签特征选择算法。 (c)2020 Elsevier B.v.保留所有权利。

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