Tensor Missing Value Recovery with Tucker Thresholding Method

Junxiu Zhou, Shigang Liu, Guoyong Qiu, Fengmin Zhang, Jiancheng Sun
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引用次数: 3

Abstract

In this paper, a tensor missing value recovery method on the tensor Tucker decomposition is presented. The contribution of this paper is to extend matrix shrinkage operator to the tensor Tucker higher-order singular value decomposition operator to obtain the best low-n-rank automatic. To obtain the optimal approximation tensor which is the key factor in recovery missing value of tensors, a tensor Tucker higher-order orthogonal iteration decomposition is presented which can solve the tensor trace norm objective function directly. In order to avoid relaxing the tensor trace norm function, the augment Lagrange multiplier method is adapted to the solving process. Without turning it into the average of the trace norms of all matrices unfolded along each mode, our method has more recovery accuracy and robust than the off-the-shelf method.
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基于Tucker阈值法的张量缺失值恢复
本文提出了一种基于张量Tucker分解的张量缺失值恢复方法。本文的贡献在于将矩阵收缩算子推广到张量Tucker高阶奇异值分解算子中,从而得到最佳的低n秩自动分解算子。为了获得恢复张量缺失值的最优逼近张量,提出了一种直接求解张量迹范数目标函数的张量Tucker高阶正交迭代分解方法。为了避免张量迹范数函数的松弛,在求解过程中采用了增广拉格朗日乘子法。该方法无需将其转化为沿每个模态展开的所有矩阵的迹范数的平均值,具有比现有方法更高的恢复精度和鲁棒性。
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