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Enhancement of quantum particle swarm optimization in elman recurrent network with bounded VMAX function

机译:有界VMAX函数增强Elman递归网络中的量子粒子群算法。

摘要

There are many drawbacks in BP network, such as trap into local minima and may get stuck at regions of a search space. To solve these problems, Particle Swarm Optimization (PSO) has been executed to improve ANN performance. In this study, we exploit errors optimization of Elman Recurrent Neural Network (ERNN) with a new enhance method of Particle Swarm Optimization with an addition of quantum approach to optimize the performance of both networks with bounded Vmax function. Main characteristics of Vmax function are to control the global exploration of particles in Particle Swarm Optimization and Quantum approach is used to improve the searching ability of the individual particle of PSO. The results show that for cancer dataset, Quantum Particle Swarm Optimization in Elman Recurrent Neural Network (QPSOERN) with bounded Vmax of hyperbolic tangent depicted 96.26 and Vmax sigmoid function with 96.35 which both furnishes promising outcomes and better value in terms of classification accuracy and convergence rate compared to bounded standard Vmax function with only 90.98.
机译:BP网络有很多缺点,例如陷入局部最小值,并可能卡在搜索空间的区域中。为了解决这些问题,已经执行了粒子群优化(PSO)以提高ANN性能。在这项研究中,我们利用一种新的粒子群优化增强方法,利用量子方法来改进Elman递归神经网络(ERNN)的错误优化,并增加了量子方法,以优化两个有界Vmax函数的网络的性能。 Vmax函数的主要特征是在“粒子群优化”中控制粒子的全局探索,并使用“量子”方法提高PSO单个粒子的搜索能力。结果表明,对于癌症数据集,双曲线切线有界Vmax的Elman递归神经网络(QPSOERN)中的量子粒子群优化描述了96.26和Smax具有96.35的Sigmoid函数,这在分类准确性和收敛速度方面均提供了有希望的结果和更好的价值相比有界标准Vmax函数只有90.98。

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