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Clustering-based initialization for non-negative matrix factorization

机译:用于非负矩阵分解的基于聚类的初始化

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摘要

Non-negative matrix factorization (NMF) is an unsupervised learning algorithm that can extract parts from visual data. The goal of this technique is to find intuitive basis such that training examples can be faithfully reconstructed using linear combination of basis images which are restricted to non-negative values. Thus, NMF basis images can be understood as localized features that correspond better with intuitive notions of parts of images. However, there has been few systematic study to explore various methods for initialization of NMF algorithm, which is crucial for the performance of NMF algorithm in data analysis. In this paper, we discuss a structured NMF initialization scheme based on the clustering method. Comparing with the random initialization in common use, our method achieved faster convergence while maintaining the data structure and also obtained good result for the face recognition task. Furthermore, we also proposed to use a normalized AIC incorporated with our NMF initialization for rank selection of traditional NMF at the cost of much less computational load while obtaining a good performance in face recognition. (C) 2008 Elsevier Inc. All rights reserved.
机译:非负矩阵分解(NMF)是一种无监督的学习算法,可以从视觉数据中提取零件。该技术的目标是找到直观的基础,以便可以使用限于非负值的基础图像的线性组合来忠实地重建训练示例。因此,NMF基础图像可被理解为与图像部分的直观概念更好地对应的局部特征。然而,很少有系统的研究来探索各种初始化NMF算法的方法,这对于NMF算法在数据分析中的性能至关重要。在本文中,我们讨论了一种基于聚类方法的结构化NMF初始化方案。与常用的随机初始化相比,我们的方法在保持数据结构的同时实现了更快的收敛速度,并且在人脸识别方面也取得了不错的效果。此外,我们还建议将结合我们的NMF初始化的归一化AIC用于传统NMF的等级选择,其代价是计算量要少得多,同时获得良好的人脸识别性能。 (C)2008 Elsevier Inc.保留所有权利。

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