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Joint Self-expression with Adaptive Graph for Unsupervised Feature Selection

机译:带有自适应图形的联合自我表达,无监督的特征选择

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Feature selection usually takes unsupervised way to prepro-cess the data before clustering. In the unsupervised feature selection, the embedding based method can capture more discriminative information contained in data compared to the other methods. Considering many existing methods learn a cluster indicator matrix which may bring noise, and at the same time, these kinds of methods does not make good use of the geometry structure of the data. In order to address the existing problems, we propose a novel model based on joint self-expression model with adaptive graph constraint. The joint self-expression module is utilized to explore the relationship between features. Different from the conventional self-expression, our joint self-expression module contains two types self-expression, i.e., conventional self-expression and the convex non-negative matrix factorization (CNMF) which can extract more representative features. Furthermore, we introduce manifold learning to maintain the structural characteristics of the original data. Adaptive graph regularization term is also incorporated based on the principle of maximum entropy into our model. In order to solve the final model, an alternative algorithm is well designed. Finally, experiment is well designed on five benchmark datasets and the experimental results show that the model proposed in this paper is more effectiveness than the state-of-the-art comparison models.
机译:特征选择通常会对群集之前的数据进行无监督方式。在无监督的特征选择中,基于嵌入的方法可以与其他方法相比捕获数据中包含的更多辨别信息。考虑到许多现有方法学习群集指示符矩阵,可能会带来噪音,同时,这些类型的方法不会充分利用数据的几何结构。为了解决现有问题,我们提出了一种基于具有自适应图约束的联合自我表达模型的新型模型。联合自我表达模块用于探索功能之间的关系。与传统的自我表达不同,我们的关节自我表达模块包含两种类型的自我表达,即传统的自我表达和凸非负矩阵分解(CNMF),其可以提取更多代表性的特征。此外,我们介绍了歧管学习以维持原始数据的结构特征。自适应图形正则化项也基于最大熵原理进入我们的模型。为了解决最终模型,设计了替代算法。最后,实验精心设计在五个基准数据集中,实验结果表明,本文提出的模型比最先进的比较模型更有效。

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