Litcius/Paper detail

Meta-Learning-Based Deep Reinforcement Learning for Multiobjective Optimization Problems

Zizhen Zhang, Zhiyuan Wu, Hang Zhang, Jiahai Wang

2022IEEE Transactions on Neural Networks and Learning Systems116 citationsDOI

Abstract

Deep reinforcement learning (DRL) has recently shown its success in tackling complex combinatorial optimization problems. When these problems are extended to multiobjective ones, it becomes difficult for the existing DRL approaches to flexibly and efficiently deal with multiple subproblems determined by the weight decomposition of objectives. This article proposes a concise meta-learning-based DRL approach. It first trains a meta-model by meta-learning. The meta-model is fine-tuned with a few update steps to derive submodels for the corresponding subproblems. The Pareto front is then built accordingly. Compared with other learning-based methods, our method can greatly shorten the training time of multiple submodels. Due to the rapid and excellent adaptability of the meta-model, more submodels can be derived so as to increase the quality and diversity of the found solutions. The computational experiments on multiobjective traveling salesman problems and multiobjective vehicle routing problems with time windows demonstrate the superiority of our method over most of the learning-based and iteration-based approaches.

Topics & Concepts

Mathematical optimizationReinforcement learningMulti-objective optimizationComputer scienceAdaptabilityDecompositionTravelling salesman problemTrainPareto principlePareto optimalQuality (philosophy)Optimization problemArtificial intelligenceCombinatorial optimizationProperty (philosophy)Routing (electronic design automation)MathematicsRepresentation (politics)Vehicle routing problemHybrid algorithm (constraint satisfaction)2-optAdvanced Multi-Objective Optimization AlgorithmsVehicle Routing Optimization MethodsReinforcement Learning in Robotics