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A Hybrid Genetic Learning Algorithm for Pi-Sigma Neural Network and the Analysis of Its Convergence

机译:一种PI-SIGMA神经网络的混合遗传学习算法及其收敛分析

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This paper uses a hybrid genetic learning algorithm to train Pi-sigma neural network and this algorithm was once applied to resolve a function optimizing problem. The hybrid genetic  learning algorithm incorporates the stronger global search of genetic algorithm into the stronger local search of flexible polyhedron method, and can search out the global optimum faster than standard genetic algorithm. The experiments show that the hybrid genetic algorithm can achieve better performance. At last, the hybrid genetic algorithm is proved converge to the global optimum with the probability of 1.
机译:本文使用混合遗传学习算法来训练PI-Sigma神经网络,并且该算法曾应用于解决函数优化问题。混合遗传学习算法包含了遗传算法的强大全球搜索柔性多面体方法的较强的本地搜索,并且可以比标准遗传算法更快地搜索全局最佳。实验表明,混合遗传算法可以实现更好的性能。最后,证明了混合遗传算法会聚到全局最优用1的概率。

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