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Postgraduate Entrant and Employment Forecasting Using Modified BP Neural Network with PSO

机译:基于PSO的BP神经网络的研究生入学与就业预测

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It is hard to train the influence variables and to forecast the complex problems due to the time series. Recently the neural network method has been successfully employed to solve the forecasting problem. In this paper, an approach that integrate modified BP neural network optimized with particle swarm optimization algorithm (MBPPSO) is proposed which applied to forecast postgraduate entrant and employment problem. It introduces particle swarm optimization algorithm to optimize the initial weights of the BP neural network, which effectively improve velocity of convergence BP neural network. Moreover, the adaptive adjust learn strategy is introduced to avoid acutely shake of train and decrease the bias error. The experiment results show MBPPSO can achieve reasonable forecast result.
机译:由于时间序列,很难训练影响变量和预测复杂问题。最近,神经网络方法已经成功地用于解决预测问题。本文提出了一种将改进的BP神经网络与粒子群优化算法(MBPPSO)相结合的方法,用于预测研究生入学和就业问题。引入粒子群算法优化BP神经网络的初始权重,有效提高了BP神经网络的收敛速度。此外,引入了自适应调整学习策略,以避免列车剧烈晃动并减少偏差。实验结果表明MBPPSO可以达到合理的预测效果。

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