Abstract:
In recent years, low-rank tensor completion (LRTC) problems have received a significant amount of attention in computer vision, data mining, and signal processing. The ex...Show MoreMetadata
Abstract:
In recent years, low-rank tensor completion (LRTC) problems have received a significant amount of attention in computer vision, data mining, and signal processing. The existing trace norm minimization algorithms for iteratively solving LRTC problems involve multiple singular value decompositions of very large matrices at each iteration. Therefore, they suffer from high computational cost. In this paper, we propose a novel trace norm regularized CANDECOMP/PARAFAC decomposition (TNCP) method for simultaneous tensor decomposition and completion. We first formulate a factor matrix rank minimization model by deducing the relation between the rank of each factor matrix and the mode-n rank of a tensor. Then, we introduce a tractable relaxation of our rank function, and then achieve a convex combination problem of much smaller-scale matrix trace norm minimization. Finally, we develop an efficient algorithm based on alternating direction method of multipliers to solve our problem. The promising experimental results on synthetic and real-world data validate the effectiveness of our TNCP method. Moreover, TNCP is significantly faster than the state-of-the-art methods and scales to larger problems.
Published in: IEEE Transactions on Cybernetics ( Volume: 45, Issue: 11, November 2015)
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- IEEE Keywords
- Index Terms
- Nuclear Norm ,
- Data Mining ,
- Computer Vision ,
- Efficient Algorithm ,
- Real-world Data ,
- Matrix Factorization ,
- Singular Value ,
- Singular Value Decomposition ,
- Rank Of Matrix ,
- Large Matrix ,
- Convex Combination ,
- Ranking Function ,
- Tensor Decomposition ,
- Tensor Rank ,
- Low-rank Tensor ,
- Optimization Problem ,
- Running Time ,
- Distribution Range ,
- Average Results ,
- Color Images ,
- Relative Square Error ,
- Decomposition Problem ,
- Link Prediction ,
- Natural Images ,
- Order Tensor ,
- Non-convex Problem ,
- Tucker Decomposition ,
- Matrix Completion ,
- Regularization Parameter ,
- Limit Point
- Author Keywords
- Author Free Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Nuclear Norm ,
- Data Mining ,
- Computer Vision ,
- Efficient Algorithm ,
- Real-world Data ,
- Matrix Factorization ,
- Singular Value ,
- Singular Value Decomposition ,
- Rank Of Matrix ,
- Large Matrix ,
- Convex Combination ,
- Ranking Function ,
- Tensor Decomposition ,
- Tensor Rank ,
- Low-rank Tensor ,
- Optimization Problem ,
- Running Time ,
- Distribution Range ,
- Average Results ,
- Color Images ,
- Relative Square Error ,
- Decomposition Problem ,
- Link Prediction ,
- Natural Images ,
- Order Tensor ,
- Non-convex Problem ,
- Tucker Decomposition ,
- Matrix Completion ,
- Regularization Parameter ,
- Limit Point
- Author Keywords
- Author Free Keywords