遗传算法与遗传规划在解决学校课程表问题中的比较

Rushil Raghavjee, N. Pillay
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引用次数: 22

摘要

在本文中,我们比较了遗传算法和遗传规划在求解一组困难的学校课程表问题上的性能。遗传算法搜索一个解空间,而遗传规划则探索一个程序空间。虽然以前的工作已经研究了遗传算法在解决学校课程表问题中的使用,但在这一领域中使用遗传规划还没有任何研究。遗传算法探索一个时间表空间,以找到一个最优时间表。另一方面,GP搜索一个最优程序,该程序在执行时将产生一个解决方案。每个程序由操作员组成,用于时间表的构建。GA和GP在艾布拉姆森学校课程表问题集上进行了测试。在解决这类问题时,遗传规划比遗传算法更有效。此外,发现遗传算法和GP产生的结果与应用于同一组问题的方法是比较的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparison of genetic algorithms and genetic programming in solving the school timetabling problem
In this paper we compare the performance of genetic algorithms and genetic programming in solving a set of hard school timetabling problems. Genetic algorithms search a solution space whereas genetic programming explores a program space. While previous work has examined the use of genetic algorithms in solving the school timetabling problem, there has not been any research on the use of genetic programming for this domain. The GA explores a space of timetables to find an optimal timetable. GP on the other hand searches for an optimal program which when executed will produce a solution. Each program is comprised of operators for timetable construction. The GA and GP were tested on the Abramson set of school timetabling problems. Genetic programming proved to be more effective than genetic algorithms in solving this set of problems. Furthermore, the results produced by both the GA and GP were found to be comparative to methods applied to the same set of problems.
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