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EA/G-GA for Single Machine Scheduling Problems with Earliness/Tardiness Costs

An Estimation of Distribution Algorithm (EDA), which depends on explicitly sampling mechanisms based on probabilistic models with information extracted from the parental solutions to generate new solutions, has constituted one of the major research areas in the field of evolutionary computation. No genetic operators are used in EDAs is a major characteristic differentiating EDAs from other genetic algorithms (GAs). This advantage, however, could lead to premature convergence of EDAs as the probabilistic models are no longer generating diversified solutions. In our previous research [1], we have presented the evidences that EDAs suffer from the drawback of premature convergency, thus several important guidelines are provided for the design of effective EDAs. In this paper, we validated one guideline for incorporating other meta-heuristics into the EDAs. An algorithm named "EA/G-GA" is proposed by selecting a well-known EDA, EA/G, to work with GAs. The proposed algorithm was tested on the NP-Hard single machine scheduling problems with the total weighted earliness/tardiness cost in a just-in-time environment. The experimental results indicated that the EA/G-GA outperforms the compared algorithms statistically significant across different stopping criteria and demonstrated the robustness of the proposed algorithm. Consequently, this paper is of interest and importance in the field of EDAs.

For more information, please read the following paper.
Shih-Hsin Chen 1, Min-Chih Chen, Pei-Chann Chang, and Yuh-Min Chen (2011), EA/G-GA for Single Machine Scheduling Problems with Earliness/Tardiness Costs, submitted to Entropy.

  1. Result Table

Acknowledgement: Thanks the reviewer who suggested we should validate the parameter setting of the EA/G-GA.