基于简化智能单粒子优化的神经网络数字识别

Jiarui Zhou, Z. Ji, L. Shen
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引用次数: 21

摘要

针对智能单粒子优化(ISPO)过于依赖输入参数的缺点,提出了一种改进算法——简化智能单粒子优化(SISPO)。在保持与ISPO类似的性能的同时,SISPO不需要特殊的参数设置。该方法已成功应用于数字识别神经网络分类器的训练。实验结果表明,所提出的神经网络训练算法——简化智能单粒子优化神经网络(SISPONN),与梯度方法等传统BP算法相比,训练误差和测试误差较小。
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Simplified Intelligence Single Particle Optimization Based Neural Network for Digit Recognition
To overcome the drawback of overly dependence on the input parameters in intelligence single particle optimization (ISPO), an improved algorithm, called simplified intelligence single particle optimization (SISPO), is proposed in this paper. While maintaining similar performance as ISPO, no special parameter settings are required by SISPO. The proposed SISPO was successfully applied to train neural network classifier for digit recognition. Experimental results demonstrated that, the proposed neural network training algorithm, simplified intelligence single particle optimization neural network (SISPONN), achieved less training error and test error than traditional BP algorithms like gradient methods.
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