Generative Modeling via Hierarchical Tensor Sketching

04/11/2023
by   Yifan Peng, et al.
0

We propose a hierarchical tensor-network approach for approximating high-dimensional probability density via empirical distribution. This leverages randomized singular value decomposition (SVD) techniques and involves solving linear equations for tensor cores in this tensor network. The complexity of the resulting algorithm scales linearly in the dimension of the high-dimensional density. An analysis of estimation error demonstrates the effectiveness of this method through several numerical experiments.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/01/2022

High-dimensional density estimation with tensorizing flow

We propose the tensorizing flow method for estimating high-dimensional p...
research
02/23/2022

Generative modeling via tensor train sketching

In this paper we introduce a sketching algorithm for constructing a tens...
research
09/03/2022

Generative Modeling via Tree Tensor Network States

In this paper, we present a density estimation framework based on tree t...
research
06/27/2023

Tensor Completion via Leverage Sampling and Tensor QR Decomposition for Network Latency Estimation

In this paper, we consider the network latency estimation, which has bee...
research
07/17/2022

An Efficient Randomized Fixed-Precision Algorithm for Tensor Singular Value Decomposition

The existing randomized algorithms need an initial estimation of the tub...
research
06/28/2019

Tucker Tensor Decomposition on FPGA

Tensor computation has emerged as a powerful mathematical tool for solvi...
research
05/10/2020

Robust Tensor Decomposition for Image Representation Based on Generalized Correntropy

Traditional tensor decomposition methods, e.g., two dimensional principa...

Please sign up or login with your details

Forgot password? Click here to reset