Accelerated Search for Non-Negative Greedy Sparse Decomposition via Dimensionality Reduction

Konstantinos A. Voulgaris, Mike E. Davies, Mehrdad Yaghoobi
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Abstract

Non-negative signals form an important class of sparse signals. Many algorithms have already been proposed to recover such non-negative representations, where greedy and convex relaxed algorithms are among the most popular methods. One fast implementation is the FNNOMP algorithm that updates the non-negative coefficients in an iterative manner. Even though FNNOMP is a good approach when working on libraries of small size, the operational time of the algorithm grows significantly when the size of the library is large. This is mainly due to the selection step of the algorithm that relies on matrix vector multiplications. We here introduce the Embedded Nearest Neighbor (E-NN) algorithm which accelerates the search over large datasets while it is guaranteed to find the most correlated atoms. We then replace the selection step of FNNOMP by E-NN. Furthermore we introduce the Update Nearest Neighbor (U-NN) at the look up table of FNNOMP in order to assure the non-negativity criteria of FNNOMP. The results indicate that the proposed methodology can accelerate FNNOMP with a factor 4 on a real dataset of Raman Spectra and with a factor of 22 on a synthetic dataset.
基于降维的非负贪婪稀疏分解加速搜索
非负信号是一类重要的稀疏信号。已经提出了许多算法来恢复这种非负表示,其中贪婪和凸松弛算法是最流行的方法。一种快速实现是FNNOMP算法,它以迭代的方式更新非负系数。尽管FNNOMP在处理小型库时是一种很好的方法,但是当库规模较大时,算法的操作时间会显著增加。这主要是由于算法的选择步骤依赖于矩阵向量乘法。本文介绍了嵌入式最近邻(E-NN)算法,该算法在保证找到最相关原子的同时,加快了对大型数据集的搜索。然后用E-NN代替FNNOMP的选择步骤。为了保证FNNOMP的非负性准则,我们在FNNOMP的查找表中引入了更新最近邻(U-NN)。结果表明,该方法在真实拉曼光谱数据集上的加速系数为4,在合成数据集上的加速系数为22。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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