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Tucker factorization with missing data with application to low-n-rank tensor completion

机译:Tucker因式分解在缺少数据的情况下应用于低n阶张量补全

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The problem of tensor completion arises often in signal processing and machine learning. It consists of recovering a tensor from a subset of its entries. The usual structural assumption on a tensor that makes the problem well posed is that the tensor has low rank in every mode. Several tensor completion methods based on minimization of nuclear norm, which is the closest convex approximation of rank, have been proposed recently, with applications mostly in image inpainting problems. It is often stated in these papers that methods based on Tucker factorization perform poorly when the true ranks are unknown. In this paper, we propose a simple algorithm for Tucker factorization of a tensor with missing data and its application to low-(n)-rank tensor completion. The algorithm is similar to previously proposed method for PARAFAC decomposition with missing data. We demonstrate in several numerical experiments that the proposed algorithm performs well even when the ranks are significantly overestimated. Approximate reconstruction can be obtained when the ranks are underestimated. The algorithm outperforms nuclear norm minimization methods when the fraction of known elements of a tensor is low.
机译:张量完成的问题经常出现在信号处理和机器学习中。它包括从其项的子集恢复张量。通常使张量构成问题的张量在结构上的假设是,张量在每种模式下的秩均较低。最近已经提出了几种基于核规范最小化的张量补全方法,这是秩的最接近的凸近似,其主要用于图像修复问题。这些论文中经常提到,当真实排名未知时,基于Tucker因式分解的方法效果较差。在本文中,我们提出了一种用于缺少数据的张量的Tucker分解的简单算法,并将其应用于低(n)秩张量完成。该算法类似于先前提出的用于丢失数据的PARAFAC分解的方法。我们在几个数值实验中证明,即使秩被明显高估,所提出的算法也能很好地执行。当等级被低估时,可以获得近似重建。当张量的已知元素比例较低时,该算法的性能优于核规范最小化方法。

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