Reinforcement Quantum Annealing: A Quantum-Assisted Learning Automata Approach

01/01/2020
by   Ramin Ayanzadeh, et al.
12

We introduce the reinforcement quantum annealing (RQA) scheme in which an intelligent agent interacts with a quantum annealer that plays the stochastic environment role of learning automata and tries to iteratively find better Ising Hamiltonians for the given problem of interest. As a proof-of-concept, we propose a novel approach for reducing the NP-complete problem of Boolean satisfiability (SAT) to minimizing Ising Hamiltonians and show how to apply the RQA for increasing the probability of finding the global optimum. Our experimental results on two different benchmark SAT problems (namely factoring pseudo-prime numbers and random SAT with phase transitions), using a D-Wave 2000Q quantum processor, demonstrated that RQA finds notably better solutions with fewer samples, compared to state-of-the-art techniques in the realm of quantum annealing.

READ FULL TEXT
research
10/29/2019

Estimating the Density of States of Boolean Satisfiability Problems on Classical and Quantum Computing Platforms

Given a Boolean formula ϕ(x) in conjunctive normal form (CNF), the densi...
research
02/25/2016

Exponential capacity of associative memories under quantum annealing recall

Associative memory models, in theoretical neuro- and computer sciences, ...
research
06/24/2019

Quantum-Assisted Genetic Algorithm

Genetic algorithms, which mimic evolutionary processes to solve optimiza...
research
02/04/2019

Factoring semi-primes with (quantum) SAT-solvers

The assumed computationally difficulty of factoring large integers forms...
research
11/22/2021

A Quantum Annealing Approach to Reduce Covid-19 Spread on College Campuses

Disruptions of university campuses caused by COVID-19 have motivated str...
research
10/23/2020

Dynamical replica analysis of quantum annealing

Quantum annealing aims to provide a faster method for finding the minima...

Please sign up or login with your details

Forgot password? Click here to reset