Journal article

A deep reinforcement learning hyper-heuristic with feature fusion for online packing problems

C Tu, R Bai, U Aickelin, Y Zhang, H Du

Expert Systems with Applications | PERGAMON-ELSEVIER SCIENCE LTD | Published : 2023

Open access

Abstract

In recent years, deep reinforcement learning has shown great potential in solving computer games with sequential decision-making scenarios. Hyper-heuristic is a generic search framework, capable of intelligently selecting or generating algorithms to solve a class of optimisation problems with stochastic or dynamic settings. This paper proposes a new general framework for solving online packing problems using deep reinforcement learning hyper-heuristics. Although analytical approaches can address most offline packing problems successfully, their online versions have proved much more challenging and the performance of the existing methods is often not satisfactory. In this paper, we extend a r..

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University of Melbourne Researchers