联合自适应损失和l2/ 10范数最小化的无监督特征选择

Mingjie Qian, ChengXiang Zhai
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引用次数: 15

摘要

无监督特征选择是降低数据挖掘任务复杂性和提高数据挖掘泛化性能的有效工具。在本文中,我们提出了一种具有显式l2/ 10范数最小化的自适应无监督特征选择(AUFS)算法。我们使用联合自适应损失进行数据拟合,并使用l2/ 10最小化进行特征选择。我们用一种高效的迭代算法解决了优化问题,并证明了无监督特征选择的所有预期性质都可以保持。我们还表明,计算复杂度和内存使用仅与实例数量成线性关系,与集群数量成平方关系。实验表明,我们的算法在7个不同的基准数据集上的性能优于目前最先进的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Joint adaptive loss and l2/l0-norm minimization for unsupervised feature selection
Unsupervised feature selection is a useful tool for reducing the complexity and improving the generalization performance of data mining tasks. In this paper, we propose an Adaptive Unsupervised Feature Selection (AUFS) algorithm with explicit l2/l0-norm minimization. We use a joint adaptive loss for data fitting and a l2/l0 minimization for feature selection. We solve the optimization problem with an efficient iterative algorithm and prove that all the expected properties of unsupervised feature selection can be preserved. We also show that the computational complexity and memory use is only linear to the number of instances and square to the number of clusters. Experiments show that our algorithm outperforms the state-of-the-arts on seven different benchmark data sets.
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