Category: Genetic Algorithms a Sequential Similarity Metric for Case Injected Genetic Algorithms Applied to Tsps

نویسندگان

  • Sushil J. Louis
  • Yongmian Zhang
چکیده

We present and use a sequence similarity metric to solve sets of similar problems with case injected genetic algorithms. Rather than starting anew on each problem, we periodically inject a genetic algorithm's population with appropriate intermediate solutions to similar, previously solved problems. Using simple syntactic similarity measures, our experimental results from optimizing a series of traveling salesman problems demonstrates the robustness of our approach. Results show that compared to a randomly initialized genetic algorithm, our system learns to take decreasing time to provide better solutions to a new problem as it gains experience from solving other similar problems.

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تاریخ انتشار 2008