数据表示的多层概念分解

Xue Li, Chunxia Zhao, Zhenqiu Shu, Qiong Wang
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引用次数: 6

摘要

以前的研究表明,概念分解(CF)在降维和数据表示方面取得了令人印象深刻的结果。然而,对于一些复杂的数据,特别是对于条件恶劣和尺度严重的数据,单层概念分解很难得到理想的结果。为了提高现有CF算法的性能,在本文中,我们提出了一种新的聚类方法,称为多层概念分解(MCF),用于数据表示。MCF是L个混合子系统的级联连接,将观测矩阵逐层迭代分解。同时,我们探索了MCF方法的相应更新解,以降低在非凸交替计算中陷入局部极小值的风险。在文档和人脸数据集上的实验结果表明,本文方法在聚类的准确率和归一化互信息方面都取得了较好的聚类性能。
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Multilayer concept factorization for data representation
Previous studies have demonstrated that Concept Factorization (CF) have yielded impressive results for dimensionality reduction and data representation. However, it is difficult to get a desired result by using single layer concept factorization for some complex data, especially for ill-conditioned and badly scaled data. To improve the performance of the existing CF algorithms, in this paper, we proposed a novel clustering approach, called Multilayer Concept Factorization (MCF), for data representation. MCF is a cascade connection of L mixing subsystems to decompose the observation matrix iteratively in a number of layers. Meanwhile, we explore the corresponding update solutions of the MCF method to reduce the risk of getting stuck in local minima in non-convex alternating computations. Experimental results on document and face dataset demonstrate that our proposed method achieves better clustering performance in terms of accuracy and normalized mutual information in clustering.
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