论文标题
低量张量学习,非凸纹重叠的核标准正则化
Low-rank Tensor Learning with Nonconvex Overlapped Nuclear Norm Regularization
论文作者
论文摘要
NonConvex正则化已被普遍存在低级矩阵学习中。但是,将其扩展以进行低级张量学习仍然在计算上仍然很昂贵。为了解决这个问题,我们开发了一个有效的求解器,用于与重叠的核标准常规化器的非凸延伸。根据近端平均算法,所提出的算法可以避免昂贵的张量折叠/展开操作。在整个迭代中,都保持了特殊的“稀疏加上低级”结构,并允许快速计算单个近端步骤。随着自适应动量的使用,进一步改善了经验收敛。我们为平稳损失的关键点以及满足Kurdyka-见条件的目标提供了融合保证。虽然优化问题是非凸和非平滑的,但我们表明其关键点在张量完成问题上仍然具有良好的统计性能。各种合成和现实世界数据集的实验表明,所提出的算法在时间和空间上都是有效的,并且比现有的最新算法更准确。
Nonconvex regularization has been popularly used in low-rank matrix learning. However, extending it for low-rank tensor learning is still computationally expensive. To address this problem, we develop an efficient solver for use with a nonconvex extension of the overlapped nuclear norm regularizer. Based on the proximal average algorithm, the proposed algorithm can avoid expensive tensor folding/unfolding operations. A special "sparse plus low-rank" structure is maintained throughout the iterations, and allows fast computation of the individual proximal steps. Empirical convergence is further improved with the use of adaptive momentum. We provide convergence guarantees to critical points on smooth losses and also on objectives satisfying the Kurdyka-Łojasiewicz condition. While the optimization problem is nonconvex and nonsmooth, we show that its critical points still have good statistical performance on the tensor completion problem. Experiments on various synthetic and real-world data sets show that the proposed algorithm is efficient in both time and space and more accurate than the existing state-of-the-art.