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A Hybrid Optimization Algorithm for Extreme Learning Machine

机译:极限学习机的混合优化算法

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In this paper, a learning algorithm based on particle swarm optimization method (PSO) and a novel heuristic optimization method of gravitational search algorithm (GSA) for extreme learning machine (ELM) is proposed in terms of improving the generalization performance of single hidden-layer feed-forward neural networks, which is called as PSOGSA-ELM learning algorithm. The proposed learning algorithm uses a hybrid approach of PSO and GSA to select the optimal hidden biases and input weights of ELM, and then the output weights of ELM is analytically determined by the Moore-Penrose generalized inverse. The performance of the proposed algorithm is verified by regression and classification benchmark problems and is compared with PSO-ELM, GSA-ELM, and the original ELM learning algorithms, simulation results show that the proposed algorithm performs equal to or better than the other algorithms in terms of generalization performance and has good convergence speed.
机译:本文基于粒子群优化方法(PSO)的学习算法和用于极端学习机(ELM)的重力搜索算法(GSA)的新型启发式优化方法,提高了单个隐藏层的泛化性能前馈神经网络,称为PSOGSA-ELM学习算法。所提出的学习算法使用PSO和GSA的混合方法来选择ELM的最佳隐藏偏差和输入权重,然后通过摩尔彭罗斯广义逆分析ELM的输出权重。通过回归和分类基准问题验证了所提出的算法的性能,并与PSO-ELM,GSA-ELM和原始ELM学习算法进行比较,仿真结果表明,所提出的算法比其他算法相等或更好地执行泛化性能条款,收敛速度良好。

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