论文标题
通过低级张量环完成嘈杂的张量
Noisy Tensor Completion via Low-rank Tensor Ring
论文作者
论文摘要
张量完成是用于不完整数据分析的基本工具,其目标是预测部分观察值的缺失条目。但是,现有的方法通常会明确或隐式假设,即观察到的条目是无噪声的,可以提供理论保证缺失条目的精确恢复,这在实践中是非常限制的。为了解决此类缺点,本文提出了一种新颖的嘈杂张量完成模型,该模型补充了现有作品在处理高阶和嘈杂观察结果方面的无能。具体而言,采用了张量环核定标准(TRNN)和最小二乘估计量,以分别将基础张量和观察到的条目正规化。另外,还提供了估计误差的非质子上限,以描述所提出的估计器的统计性能。开发了两种有效的算法,以解决收敛保证的优化问题,其中一种是通过替换原始张量的最小化来处理大规模张量的专门定制的,它是在异质张量分解框架中与较小的trnn相等的。对合成和现实世界数据的实验结果表明,与最新的张量张量完成模型相比,提出的模型在恢复噪声不完整的张量数据方面的有效性和效率。
Tensor completion is a fundamental tool for incomplete data analysis, where the goal is to predict missing entries from partial observations. However, existing methods often make the explicit or implicit assumption that the observed entries are noise-free to provide a theoretical guarantee of exact recovery of missing entries, which is quite restrictive in practice. To remedy such drawbacks, this paper proposes a novel noisy tensor completion model, which complements the incompetence of existing works in handling the degeneration of high-order and noisy observations. Specifically, the tensor ring nuclear norm (TRNN) and least-squares estimator are adopted to regularize the underlying tensor and the observed entries, respectively. In addition, a non-asymptotic upper bound of estimation error is provided to depict the statistical performance of the proposed estimator. Two efficient algorithms are developed to solve the optimization problem with convergence guarantee, one of which is specially tailored to handle large-scale tensors by replacing the minimization of TRNN of the original tensor equivalently with that of a much smaller one in a heterogeneous tensor decomposition framework. Experimental results on both synthetic and real-world data demonstrate the effectiveness and efficiency of the proposed model in recovering noisy incomplete tensor data compared with state-of-the-art tensor completion models.