Non-convex approaches for low-rank tensor completion under tubal sampling
Tan, Zheng, Huang, Longxiu, Cai, HanQin, Lou, Yifei
–arXiv.org Artificial Intelligence
Tensor completion is an important problem in modern data analysis. In this work, we investigate a specific sampling strategy, referred to as tubal sampling. We propose two novel non-convex tensor completion frameworks that are easy to implement, named tensor $L_1$-$L_2$ (TL12) and tensor completion via CUR (TCCUR). We test the efficiency of both methods on synthetic data and a color image inpainting problem. Empirical results reveal a trade-off between the accuracy and time efficiency of these two methods in a low sampling ratio. Each of them outperforms some classical completion methods in at least one aspect.
arXiv.org Artificial Intelligence
Mar-17-2023
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