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Robust Nonnegative Matrix Factorization with Ordered Structure Constraints

机译:具有有序结构约束的鲁棒非负矩阵分解

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摘要

Nonnegative matrix factorization (NMF) as a popular technique to find parts- based representations of nonnegative data has been widely used in real-world applications. Often the data which these applications process, such as motion sequences and video clips, are with ordered structure, i.e., consecutive neighbouring data samples are very likely share similar features unless a sudden change occurs. Therefore, traditional NMF assumes the data samples and features to be independently distributed, making it not proper for the analysis of such data. In this paper, we propose an ordered robust NMF (ORNMF) by capturing the embedded ordered structure to improve the accuracy of data representation. With a novel neighbour penalty term, ORNMF enforces the similarity of neighbouring data. ORNMF also adopts the $L_{2,1}$-norm based loss function to improve its robustness against noises and outliers. A new iterative updating optimization algorithm is derived to solve ORNMF's objective function. The proofs of the convergence and correctness of the scheme are also presented. Experiments on both synthetic and real-world datasets have demonstrated the effectiveness of ORNMF.
机译:非负矩阵因式分解(NMF)作为查找基于零件的非负数据表示的一种流行技术已在实际应用中广泛使用。这些应用程序处理的数据(例如运动序列和视频剪辑)通常具有有序的结构,即,除非发生突然的变化,否则连续的相邻数据样本很有可能会共享相似的特征。因此,传统的NMF假定数据样本和特征是独立分布的,这使其不适用于此类数据的分析。在本文中,我们通过捕获嵌入式有序结构来提出有序鲁棒NMF(ORNMF),以提高数据表示的准确性。使用新的邻居惩罚项,ORNMF可以增强邻居数据的相似性。 ORNMF还采用基于$ L_ {2,1} $范数的损失函数来提高其抗噪声和离群值的鲁棒性。推导了一种新的迭代更新优化算法来求解ORNMF的目标函数。还给出了该方案收敛性和正确性的证明。在合成数据集和真实数据集上的实验都证明了ORNMF的有效性。

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