DocumentCode :
3563700
Title :
Multilinear tensor rank estimation via Sparse Tucker Decomposition
Author :
Yokota, Tatsuya ; Cichocki, Andrzej
Author_Institution :
RIKEN Brain Sci. Inst., Wako, Japan
fYear :
2014
Firstpage :
478
Lastpage :
483
Abstract :
When we apply techniques of Tucker based tensor decomposition to approximate a given tensor data as a low-rank model, appropriate multi-linear tensor rank is often unknown. In such cases, we have to tune this multi-linear tensor rank from a number of combinations. In this paper, we propose a new algorithm for sparse Tucker decomposition which estimates appropriate multilinear tensor rank of the given data. In this method, we imposed orthogonal constraint into the basis matrices and sparse constraint into the core tensor, and try to prune wasted components by maximizing the sparsity of the core tensor under the condition of error bound. Thus, we call this method as the "Pruning Sparse Tucker Decomposition" (PSTD). The PSTD is very useful for estimating the appropriate multilinear tensor rank of the Tucker based sparse representation such as compression. We demonstrate several experiments of the proposed method to show its advantages.
Keywords :
image coding; sparse matrices; tensors; PSTD; Tucker based sparse representation; image compression; multilinear tensor rank estimation; orthogonal constraint; pruning sparse tucker decomposition; sparse constraint; Estimation; Image coding; Matrix decomposition; Signal to noise ratio; Sparse matrices; Tensile stress; Transform coding;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Soft Computing and Intelligent Systems (SCIS), 2014 Joint 7th International Conference on and Advanced Intelligent Systems (ISIS), 15th International Symposium on
Type :
conf
DOI :
10.1109/SCIS-ISIS.2014.7044685
Filename :
7044685
Link To Document :
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