An Improved Particle Swarm Optimization Algorithm for Parameters Optimizing of Feedforward Neural Networks

Xiaoping Zhang, Tianhang Yang, Li Wang, Zhonghe He, Shida Liu
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Abstract

Deep learning is an important branch of neural networks, which has high accuracy in classification and regression problems, and has been widely used. However, its performance is greatly affected by the parameters. In this paper, an improved particle swarm algorithm named as PSO-C is proposed to automatically train the parameters of the feedforward neural networks. In the proposed algorithm, the curiosity factor is introduced to divide the particles into two categories with different curiosity characteristics so as to improve the exploration ability and information mining ability of the particle swarms. At the same time, a chaotic factor is also introduced to avoid the local optimum problem during the neural network’s training. The simulation results show that the PSO-C has better optimization effect on the whole.
前馈神经网络参数优化的改进粒子群算法
深度学习是神经网络的一个重要分支,在分类和回归问题上具有较高的准确率,得到了广泛的应用。但其性能受参数影响较大。本文提出了一种改进的粒子群算法PSO-C,用于自动训练前馈神经网络的参数。该算法引入好奇心因子,将具有不同好奇心特征的粒子分为两类,提高了粒子群的探索能力和信息挖掘能力。同时,为了避免神经网络训练过程中的局部最优问题,还引入了混沌因子。仿真结果表明,PSO-C总体上具有较好的优化效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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