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首页> 外文期刊>Artificial Intelligence Review: An International Science and Engineering Journal >A new graph-preserving unsupervised feature selection embedding LLE with low-rank constraint and feature-level representation
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A new graph-preserving unsupervised feature selection embedding LLE with low-rank constraint and feature-level representation

机译:具有低秩约束和特征级表示的新图形保留无监督的功能选择嵌入LLE

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摘要

Unsupervised feature selection is a powerful tool to process high-dimensional data, in which a subset of features is selected out for effective data representation. In this paper, we proposes a novel robust unsupervised features selection method based on graph-preserving feature selection embedding LLE. Specifically, we integrate the graph matrix learning and the low-dimensional space learning together to identify the correlation among both features and samples from the intrinsic low-dimensional space of original data. Also, the global and local correlation of features have been taken into consideration through the low-rank constraint and the feature-level representation property to find lower-dimensional representation which preserves not only the global and local correlation of features but also the global and local structure of training samples. Furthermore, we propose a new optimization algorithm to the resulting objective function, which iteratively updates the graph matrix and the intrinsic space in order to collaboratively improve each of them. Experimental analysis on 18 benchmark datasets verified that our proposed method outperformed the state-of-the-art feature selection methods in terms of classification and clustering performance.
机译:无监督的特征选择是处理高维数据的强大工具,其中选择了有效数据表示的功能子集。在本文中,我们提出了一种基于图形保存特征选择嵌入LLE的新型稳健的无监督特征选择方法。具体地,我们将图形矩阵学习和低维空间学习集成在一起,以识别来自原始数据的内部低维空间的特征和样本之间的相关性。此外,已经通过低秩约束和特征级表示属性考虑了全局和本地相关性,以查找较低维度表示,该表达不仅保留了全局和本地相关性,而且是全局和本地的训练样本的结构。此外,我们向所得到的目标函数提出了一种新的优化算法,其迭代地更新图形矩阵和内在空间,以便协同改进它们。关于18个基准数据集的实验分析验证了我们所提出的方法在分类和聚类性能方面表现出最先进的特征选择方法。

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