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Learning neural network weights using genetic algorithms-improving performance by search-space reduction

机译:使用遗传算法学习神经网络权重-通过减少搜索空间来提高性能

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The authors present a technique for reducing the search-space of the genetic algorithm (GA) to improve its performance in searching for the globally optimal set of connection-weights. They use the notion of equivalent solutions in the search space, and include in the reduced search-space only one solution, called the base solution, from each set of equivalent solutions. The iteration of the GA consists of an additional step where the solutions are mapped to the respective base solutions. Experiments were conducted to compare the performance of the GAs with and without search-space reduction. The experimental results are presented and discussed.
机译:作者提出了一种减少遗传算法(GA)的搜索空间的技术,以提高其在搜索连接权重的全局最佳集合中的性能。他们在搜索空间中使用等效解决方案的概念,并且在缩减的搜索空间中仅包括每组等效解决方案中的一个称为基本解决方案的解决方案。 GA的迭代包含一个额外的步骤,其中将解决方案映射到相应的基本解决方案。进行了实验以比较具有和不具有减少搜索空间的GA的性能。实验结果进行了介绍和讨论。

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