Quantized-CP Approximation and Sparse Tensor Interpolation of Function Generated Data
Abstract
In this article we consider the iterative schemes to compute the canonical (CP) approximation of quantized data generated by a function discretized on a large uniform grid in an interval on the real line. This paper continues the research on the QTT method [16] developed for the tensor train (TT) approximation of the quantized images of function related data. In the QTT approach the target vector of length 2L is reshaped to a Lth order tensor with two entries in each mode (Quantized representation) and then approximated by the QTT tenor including 2r2 L parameters, where r is the maximal TT rank. In what follows, we consider the Alternating Least-Squares (ALS) iterative scheme to compute the rank-r CP approximation of the quantized vectors, which requires only 2 r L 2L parameters for storage. In the earlier papers [17] such a representation was called QCan format, while in this paper we abbreviate it as the QCP representation. We test the ALS algorithm to calculate the QCP approximation on various functions, and in all cases we observed the exponential error decay in the QCP rank. The main idea for recovering a discretized function in the rank-r QCP format using the reduced number the functional samples, calculated only at O(2rL) grid points, is presented. The special version of ALS scheme for solving the arising minimization problem is described. This approach can be viewed as the sparse QCP-interpolation method that allows to recover all 2r L representation parameters of the rank-r QCP tensor. Numerical examples show the efficiency of the QCP-ALS type iteration and indicate the exponential convergence rate in r.
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