Quantum walk in a reinforced free-energy landscape: Quantum annealing with reinforcement

02/22/2022
by   Abolfazl Ramezanpour, et al.
0

Providing an optimal path to a quantum annealing algorithm is key to find good approximate solutions to computationally hard optimization problems. Reinforcement is one of the strategies that can be used to circumvent the exponentially small energy gaps of the system in the annealing process. Here a time-dependent reinforcement term is added to Hamiltonian in order to give lower energies to the most probable states of the evolving system. In this study, we take a local entropy in the configuration space for the reinforcement and apply the algorithm to a number of easy and hard optimization problems. The reinforced algorithm performs better than the standard quantum annealing algorithm in the quantum search problem where the optimal parameters behave very differently depending on the number of solutions. Moreover, the reinforcement can change the discontinuous phase transitions of the mean-field p-spin model (p>2) to a continuous transition. The algorithm's performance in the binary perceptron problem is also superior to that of the standard quantum annealing algorithm, which already works better than a classical simulated annealing algorithm.

READ FULL TEXT
research
06/26/2017

Efficiency of quantum versus classical annealing in non-convex learning problems

Quantum annealers aim at solving non-convex optimization problems by exp...
research
12/19/2021

Quantum Approximate Optimization Algorithm applied to the binary perceptron

We apply digitized Quantum Annealing (QA) and Quantum Approximate Optimi...
research
04/25/2023

Anti-crossings occurrence as exponentially closing gaps in Quantum Annealing

This paper explores the phenomenon of avoided level crossings in quantum...
research
07/11/2019

Highly parallel algorithm for the Ising ground state searching problem

Finding an energy minimum in the Ising model is an exemplar objective, a...
research
10/10/2018

Quantum adiabatic optimization without heuristics

Quantum adiabatic optimization (QAO) is performed using a time-dependent...
research
07/02/2018

Classifying Data with Local Hamiltonians

The goal of this work is to define a notion of a quantum neural network ...

Please sign up or login with your details

Forgot password? Click here to reset