Transfer Learning for Operator Selection: A Reinforcement Learning Approach

01/20/2022
by   Mehmet Emin Aydin, et al.
0

In the past two decades, metaheuristic optimization algorithms (MOAs) have been increasingly popular, particularly in logistic, science, and engineering problems. The fundamental characteristics of such algorithms are that they are dependent on a parameter or a strategy. Some online and offline strategies are employed in order to obtain optimal configurations of the algorithms. Adaptive operator selection is one of them, and it determines whether or not to update a strategy from the strategy pool during the search process. In the filed of machine learning, Reinforcement Learning (RL) refers to goal-oriented algorithms, which learn from the environment how to achieve a goal. On MOAs, reinforcement learning has been utilised to control the operator selection process. Existing research, however, fails to show that learned information may be transferred from one problem-solving procedure to another. The primary goal of the proposed research is to determine the impact of transfer learning on RL and MOAs. As a test problem, a set union knapsack problem with 30 separate benchmark problem instances is used. The results are statistically compared in depth. The learning process, according to the findings, improved the convergence speed while significantly reducing the CPU time.

READ FULL TEXT

page 2

page 6

page 7

page 8

page 9

page 10

page 11

page 14

research
02/07/2023

Transfer learning for process design with reinforcement learning

Process design is a creative task that is currently performed manually b...
research
07/24/2020

Adaptive Energy Management for Real Driving Conditions via Transfer Reinforcement Learning

This article proposes a transfer reinforcement learning (RL) based adapt...
research
11/01/2019

Generalized Speedy Q-learning

In this paper, we derive a generalization of the Speedy Q-learning (SQL)...
research
05/17/2018

Learning Time-Sensitive Strategies in Space Fortress

Although there has been remarkable progress and impressive performance o...
research
10/22/2021

A Reinforcement Learning Approach to Parameter Selection for Distributed Optimization in Power Systems

With the increasing penetration of distributed energy resources, distrib...
research
02/25/2020

Simultaneously Evolving Deep Reinforcement Learning Models using Multifactorial Optimization

In recent years, Multifactorial Optimization (MFO) has gained a notable ...
research
09/18/2019

ModelicaGym: Applying Reinforcement Learning to Modelica Models

This paper presents ModelicaGym toolbox that was developed to employ Rei...

Please sign up or login with your details

Forgot password? Click here to reset