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Using Self-learning and Automatic Tuning to Improve the Performance of Sexual Genetic Algorithms for Constraint Satisfaction Problems

机译:利用自学和自动调整来提高性遗传算法对约束满足问题的性能

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Currently the parameters in a constraint solver are often selected by hand by experts in the field; these parameters might include the level of preprocessing to be used and the variable ordering heuristic. The efficient and automatic choice of a preprocessing level for a constraint solver is a step towards making constraint programming a more widely accessible technology. Self-learning sexual genetic algorithms are a new approach combining a self-learning mechanism with sexual genetic algorithms in order to suggest or predict a suitable solver configuration for large scale problems by learning from the same class of small scale problems. In this paper, Self-learning Sexual genetic algorithms are applied to create an automatic solver configuration mechanism for solving various constraint problems. The starting population of self-learning sexual genetic algorithms will be trained through experience on small instances. The experiments in this paper are a proof-of-concept for the idea of combining sexual genetic algorithms with a self-learning strategy to aid in parameter selection for constraint programming.
机译:目前,约束求解器中的参数通常由现场的专家手工选择;这些参数可能包括要使用的预处理级别和可变排序启发式。约束求解器的预处理级别的高效和自动选择是使约束编程成为更广泛可访问的技术的步骤。自学习性遗传算法是一种新方法,将自学习机制与性遗传算法相结合,以便通过从同一类的小规模问题学习来建议或预测大规模问题的合适求解器配置。在本文中,应用自学习性遗传算法来创建一种用于解决各种约束问题的自动求解器配置机制。自学习性遗传算法的起始群体将通过小型实例的经验培训。本文的实验是一种概念,用于将性遗传算法与自学习策略结合起来,以帮助有助于约束规划的参数选择。

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