Computation of a tensor singular value decomposition (t-SVD) with a few passes over the underlying data tensor is crucial in using modern computer architectures, where the main concern is communication cost. The current subspace randomized algorithms for computation of the t-SVD, need 2q + 2 passes over the data tensor where q is a non-negative integer number (power iteration parameter). In this paper, we propose an efficient and flexible randomized algorithm that works for any number of passes q, not necessarily being an even number. The flexibility of the proposed algorithm in using fewer passes naturally leads to lower computational and communication costs. This benefit makes it applicable especially when the data tensors are large or multiple tensor decompositions are required in our task. The proposed algorithm is a generalization of the methods developed for matrices to tensors. The expected/average error bound of the proposed algorithm is derived. Several numerical experiments on random and real-time datasets are conducted and the proposed algorithm is compared with some baseline algorithms. The results confirmed that the proposed algorithm is efficient, applicable, and can provide better performance than the existing algorithms. We also use our proposed method to develop a fast algorithm for the tensor completion problem.
翻译:在使用现代计算机结构时,主要关注的是通信成本。当前用于计算 t-SVD 的子空间随机随机算法(t-SVD) 需要 2q + 2 传到数据 Exor 数据 Exor 上, q 是非负整数( 动力迭代参数 ) 。在本文中,我们建议一种高效和灵活的随机算法, 对任何多个传票 q 有效, 不一定是偶数。 拟议的算法在使用较少传票方面的灵活性自然导致计算和通信成本降低。 这一好处使得它特别适用于我们的任务中需要的数据 或多发调分解的 。 提议的算法是对为压强量矩阵开发的方法的概括化。 所拟议的算法的预期/平均误差被推算出来。 在随机和实时数据集上进行了若干数字实验,而拟议的算法与一些基线算法进行了比较。 结果表明, 拟议的算法是高效、可适用、可适用和可提供比现有演算法更好的性。