Learning monitoring strategies: a difficult genetic programming application

M. Atkin, P. Cohen
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引用次数: 10

Abstract

Finding optimal or at least good monitoring strategies is an important consideration when designing an agent. We have applied genetic programming to this task, with mixed results. Since the agent control language was kept purposefully general, the set of monitoring strategies constitutes only a small part of the overall space of possible behaviors. Because of this, it was often difficult for the genetic algorithm to evolve them, even though their performance was superior. These results raise questions as to how easy it will be for genetic programming to scale up as the areas it is applied to become more complex.<>
学习监控策略:一个困难的遗传规划应用
在设计代理时,寻找最优或至少是良好的监控策略是一个重要的考虑因素。我们已经将遗传编程应用于这项任务,结果喜忧参半。由于智能体控制语言有意保持通用性,因此监控策略集仅构成可能行为的整体空间的一小部分。正因为如此,即使它们的性能更优越,遗传算法也很难进化它们。这些结果提出了一个问题,即随着遗传编程应用的领域变得更加复杂,它将有多容易扩大规模?
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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