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A Hybrid Genetic Algorithm Based on Information Entropy and Game Theory

Jiacheng Li, Lei Li

2020IEEE Access94 citationsDOIOpen Access PDF

Abstract

To overcome the disadvantages of traditional genetic algorithms, which easily fall to local optima, this paper proposes a hybrid genetic algorithm based on information entropy and game theory. First, a calculation of the species diversity of the initial population is conducted according to the information entropy by combining parallel genetic algorithms, including using the standard genetic algorithm (SGA), partial genetic algorithm (PGA) and syncretic hybrid genetic algorithm based on both SGA and PGA for evolutionary operations. Furthermore, with parallel nodes, complete-information game operations are implemented to achieve an optimum for the entire population based on the values of both the information entropy and the fitness of each subgroup population. Additionally, the Rosenbrock, Rastrigin and Schaffer functions are introduced to analyse the performance of different algorithms. The results show that compared with traditional genetic algorithms, the proposed algorithm performs better, with higher optimization ability, solution accuracy, and stability and a superior convergence rate.

Topics & Concepts

Population-based incremental learningComputer scienceEntropy (arrow of time)Genetic algorithmCultural algorithmPopulationMathematical optimizationAlgorithmGame theoryConvergence (economics)Local optimumMathematicsMachine learningMathematical economicsEconomicsPhysicsSociologyEconomic growthQuantum mechanicsDemographySmart Parking Systems ResearchMetaheuristic Optimization Algorithms ResearchTransportation Planning and Optimization