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Unsupervised Feature Selection Using Nonnegative Spectral Analysis

机译:使用非负谱分析的无监督特征选择

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摘要

In this paper, a new unsupervised learning algorithm, namely Nonnegative Discriminative Feature Selection (NDFS), is proposed. To exploit the discriminative information in unsupervised scenarios, we perform spectral clustering to learn the cluster labels of the input samples, during which the feature selection is performed simultaneously. The joint learning of the cluster labels and feature selection matrix enables NDFS to select the most discriminative features. To learn more accurate cluster labels, a nonnegative constraint is explicitly imposed to the class indicators. To reduce the redundant or even noisy features, ℓ_2,1-norm minimization constraint is added into the objective function, which guarantees the feature selection matrix sparse in rows. Our algorithm exploits the discriminative information and feature correlation simultaneously to select a better feature subset. A simple yet efficient iterative algorithm is designed to optimize the proposed objective function. Experimental results on different real world datasets demonstrate the encouraging performance of our algorithm over the state-of-the-arts.
机译:本文提出了一种新的无监督学习算法,即非负判别特征选择(NDFS)。为了在无监督的情况下利用判别信息,我们执行频谱聚类以学习输入样本的聚类标签,在此期间同时进行特征选择。通过对群集标签和特征选择矩阵的共同学习,NDFS可以选择最具区别性的特征。为了学习更准确的聚类标签,将非负约束明确地强加给类别指标。为了减少冗余甚至嘈杂的特征,将ℓ_2,1-范数最小化约束添加到目标函数中,以确保特征选择矩阵在行中稀疏。我们的算法同时利用判别信息和特征相关性来选择更好的特征子集。设计了一种简单而有效的迭代算法来优化所提出的目标函数。在不同的现实世界数据集上的实验结果证明了我们的算法在最新技术方面的令人鼓舞的性能。

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