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Fitness Sharing in Genetic Programming

机译:基因编程中的健身分享

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This paper investigates fitness sharing in genetic programming. Implicit fitness sharing is applied to populations of programs. Three treatments are compared: raw fitness, pure fitness sharing, and a gradual change from fitness sharing to raw fitness. The 6- and 11-multiplexer problems are compared. Using the same population sizes, fitness sharing shows a large improvement in the error rate for both problems. Further experiments compare the treatments on learning recursive list membership functions; again, there are dramatic improvements in error rate. Conversely, fitness sharing runs achieve comparable results to raw fitness using populations two to three times smaller. Measures of population diversity suggest that the results are due to preservation of diversity and avoidance of premature convergence by the fitness sharing runs.
机译:本文调查了遗传编程中的健身共享。隐式健身共享适用于计划的群体。比较了三种治疗方法:原始健身,纯洁度分享,以及从健身分享到原始健身的逐步变化。比较6和11多路复用器问题。使用相同的人口尺寸,健身共享显示了两个问题的错误率的大大提高。进一步的实验比较了学习递归名单隶属职能的治疗;同样,误差率有巨大改善。相反,健身共享运行通过两到三倍更小的群体实现了对原始健身的可比结果。人口多样性措施表明,结果是由于健身共享运行的多样性和避免早产的趋同。

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