Proximal Operator Splitting for Multi-Constraint Dictionary Learning

Zhiyong Liu
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Abstract

Although the dictionary learning (DL) problem has been extensively studied for about 15 years since the work of Olshausen, the DL problem with multi-constraints on the dictionary atoms has not yet been paid attentions. This paper first explore the DL problem using the newly emergence methods-the proximal splitting methods, such as the iterative shrinkage-thresholding algorithm (ISTA), the fast ISTA (FISTA) and the augmented Lagrange multiplier method (ALMM). Then propose a calculation method, called proximal operator splitting, to split the proximal operator with multi-constraints into several sub-proximal operator. Using this method, the existing proximal splitting methods can be easily extended to deal with the DL problem with multi-constraints. Experiments show that ALMM is a more efficient method than ISTA and FISTA. At last, compare the learned dictionaries of ALMM with the state-of-the-art methods, K-SVD and Majorization. The experimental results show that ALMM outperforms K-SVD and Majorization for correctly chosen constraints.
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多约束字典学习的邻算子分割
虽然自Olshausen的工作以来,字典学习问题已经被广泛研究了大约15年,但字典原子上的多约束深度学习问题还没有得到重视。本文首先利用迭代收缩阈值法(ISTA)、快速收缩阈值法(FISTA)和增广拉格朗日乘子法(ALMM)等新近出现的近端分裂方法对深度学习问题进行了探讨。然后提出了一种称为近端算子分裂的计算方法,将多约束的近端算子分解为若干次近端算子。利用该方法,可以很容易地扩展现有的近端分割方法来处理多约束的深度学习问题。实验表明,ALMM方法比ISTA和FISTA方法更有效。最后,将学习到的ALMM字典与最先进的K-SVD和多数化方法进行了比较。实验结果表明,在正确选择约束条件的情况下,ALMM算法优于K-SVD算法和多数化算法。
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