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PPLS/D: Parallel Pareto Local Search Based on Decomposition

Jialong Shi, Qingfu Zhang*, Jianyong Sun*

*Corresponding author for this work

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

Abstract

Pareto local search (PLS) is a basic building block in many metaheuristics for a multiobjective combinatorial optimization problem. In this paper, an enhanced PLS variant called parallel PLS based on decomposition (PPLS/D) is proposed. PPLS/D improves the efficiency of PLS using the techniques of parallel computation and problem decomposition. It decomposes the original search space into L subregions and executes L parallel processes searching in these subregions simultaneously. Inside each subregion, the PPLS/D process is guided by a unique scalar objective function. PPLS/D differs from the well-known two phase PLS in that it uses the scalar objective function to guide every move of the PLS procedure in a fine-grained manner. In the experimental studies, PPLS/D is compared against the basic PLS and a recently proposed PLS variant on the multiobjective unconstrained binary quadratic programming problems and the multiobjective traveling salesman problems with, at most, four objectives. The experimental results show that regardless of whether the initial solutions are randomly generated or generated by heuristic methods, PPLS/D always performs significantly better than the other two PLS variants.
Original languageEnglish
Pages (from-to)1060-1071
JournalIEEE Transactions on Cybernetics
Volume50
Issue number3
Online published29 Nov 2018
DOIs
Publication statusPublished - Mar 2020

Research Keywords

  • Linear programming
  • Multiobjective combinatorial optimization
  • parallel metaheuristic
  • Pareto local search
  • Partitioning algorithms
  • Quadratic programming
  • Search problems
  • Sun
  • traveling salesman problem
  • Traveling salesman problems
  • unconstrained binary quadratic programming

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