Adapt! vely Resizing Populations: Algorithm, Analysis, and First Results
نویسندگان
چکیده
Deciding on an appropriate population size for a given GA application can often be critical to the algorithm's success. Too small, and the GA can fall victim to sampling error, affecting the efficacy of its search. Too large, and the GA wastes computational resources. Although advice exists for sizing GA populations, much of this advice involves theoretical aspects that are not accessible to the novice user. This paper suggests an algorithm for adaptively resizing GA populations. This algorithm is based on recent theoretical developments that relate population size to schema fitness variance. The suggested algorithm is developed theoretically, and simulated with expected value equations. The algorithm is then tested on a problem where population sizing can mislead the GA. The work presented suggests that the population sizing algorithm may be a viable way to eliminate the population sizing decision from the application of GAs.
منابع مشابه
Adaptively Resizing Populations: Algorithm, Analysis, and First Results
Abs tract . Deciding on an appropriate population size for a given genet ic algor it hm (GA) applicat ion can oft en be crit ical to the success of the algorit hm . Too small, and t he GA can fall vict im to sampling erro r , affect ing the efficacy of it s search . Too large, and t he GA wastes computational resour ces. Although advice exists for sizing GA popula tions, much of this adv ice in...
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تاریخ انتشار 2008