Quantum Gradient Algorithm for General Polynomials
Abstract
Gradient-based algorithms, popular strategies to optimization problems, are essential for many modern machine-learning techniques. Theoretically, extreme points of certain cost functions can be found iteratively along the directions of the gradient. The time required to calculating the gradient of -dimensional problems is at a level of , which could be boosted by quantum techniques, benefiting the high-dimensional data processing, especially the modern machine-learning engineering with the number of optimized parameters being in billions. Here, we propose a quantum gradient algorithm for optimizing general polynomials with the dressed amplitude encoding, aiming at solving fast-convergence polynomials problems within both time and memory consumption in . Furthermore, numerical simulations are carried out to inspect the performance of this protocol by considering the noises or perturbations from initialization, operation and truncation. For the potential values in high-dimension optimizations, this quantum gradient algorithm is supposed to facilitate the polynomial-optimizations, being a subroutine for future practical quantum computer.
Cite
@article{arxiv.2004.11086,
title = {Quantum Gradient Algorithm for General Polynomials},
author = {Keren Li and Pan Gao and Shijie Wei and Jiancun Gao and Guilu Long},
journal= {arXiv preprint arXiv:2004.11086},
year = {2021}
}
Comments
(5+10)pages + (3+1) figures. Comments are always welcome