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Low-Rank Tensor Completion Based on Log-Det Rank Approximation and Matrix Factorization

机译:基于Log-Det秩逼近和矩阵分解的低秩张量完成

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摘要

Rank evaluation plays a key role in low-rank tensor completion and tensor nuclear norm is often used as a substitute of rank in the optimization due to its convex property. However, this replacement often incurs unexpected errors, and since singular value decomposition is frequently involved, the computation cost of the norm is high, especially in handling large scale matrices from the mode-n unfolding of a tensor. This paper presents a novel tensor completion method, in which a non-convex logDet function is utilized to approximate the rank and a matrix factorization is adopted to reduce the evaluation cost of the function. The study shows that the logDet function is a much tighter rank approximation than the nuclear norm and the matrix factorization can significantly reduce the size of matrix that needs to be evaluated. In the implementation of the method, alternating direction method of multipliers is employed to obtain the optimal tensor completion. Several experiments are carried out to validate the method and the results show that the proposed method is effective.
机译:等级评估在低等级张量完成中起关键作用,并且张量核范数由于其凸性而经常在优化中用作等级的替代。但是,这种替换通常会导致意外错误,并且由于经常涉及奇异值分解,因此规范的计算成本很高,尤其是在处理张量的模式n展开的大型矩阵时。本文提出了一种新的张量完成方法,该方法利用非凸logDet函数近似秩,并采用矩阵分解来降低函数的评估成本。研究表明,logDet函数的秩逼近度比核范数更紧密,矩阵分解可显着减小需要评估的矩阵大小。在该方法的实现中,采用乘法器的交替方向方法来获得最佳张量完成。通过多次实验验证了该方法的有效性,结果表明该方法是有效的。

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