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Layered Learning for Evolving Goal Scoring Behavior in Soccer Players

机译:用于在足球运动员中不断变化的目标评分行为的分层学习

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Layered learning allows decomposition of the stages of learning in a problem domain. We apply this technique to the evolution of goal scoring behavior in soccer players and show that layered learning is able to find solutions comparable to standard genetic programs more reliably. The solutions evolved with layers have a higher accuracy but do not make as many goal attempts. We compared three variations of layered learning and find that maintaining the population between layers as the encapsulated learnt layer is introduced to be the most computationally efficient The quality of solutions found by layered learning did not exceed those of standard genetic programming in terms of goal scoring ability.
机译:分层学习允许在问题域中分解学习的阶段。我们将这种技术应用于足球运动员中目标评分行为的演变,并表明分层学习能够更可靠地找到与标准遗传课程相当的解决方案。用层演变的解决方案具有更高的准确性,但不会产生多种目标尝试。我们比较了分层学习的三种变化,并发现将层之间的人数视为封装的学习层被引入到封装的学习层中最具计算的高效,分层学习发现的解决方案质量不超过目标评分能力方面的标准遗传编程的质量。

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