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Comparison of Search Optimization Algorithms in Two-Stage Artificial Neural Network Training for Handwritten Digits Recognition

机译:人工数字识别两阶段人工神经网络训练中搜索优化算法的比较

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Backpropagation is the most common method of training artificial neural networks in use. However, backpropagation has a tendency to get trapped in locally optimum solutions. This paper compares the ability of Barebones Fireworks Algorithm, Particle Swarm Optimization, and Cooperative Particle Swarm Optimization to improve upon an artificial neural network trained with backpropagation. The learning ability of the search algorithms and the simulations are hindered by the high dimensionality of the artificial neural network. An analysis of the simulation results shows that the Barebones Fireworks Algorithm outperforms the other two algorithms.
机译:反向传播是训练使用中的人工神经网络的最常用方法。但是,反向传播有陷入局部最优解的趋势。本文比较了准系统Fireworks算法,粒子群优化和协作粒子群优化在通过反向传播训练的人工神经网络上进行改进的能力。人工神经网络的高维性阻碍了搜索算法和仿真的学习能力。仿真结果分析表明,准系统烟花算法优于其他两种算法。

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