基于粒子群优化和概率神经网络模型的汇率预测方法

B. Liu, Hua Wang, Xiang Cheng
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引用次数: 7

摘要

外汇市场是一个复杂的市场,具有高度波动的特点。汇率的形成机制和影响汇率波动的因素也非常复杂,是一个非线性系统,很难准确预测,将概率神经网络应用到预测的前沿,并针对概率神经网络的特点对交换数据进行预处理和趋势预测。并通过改变矢量维数的实验获得嵌入维数的最佳入口,在此模型的基础上,应用粒子群优化算法在概率神经网络中对平滑因子进行优化,验证并提高了预测的精度和价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exchange Rate Forecasting Method Based on Particle Swarm Optimization and Probabilistic Neural Network Model
Foreign exchange market is a complex market, with a high degree of volatility characteristics. Exchange rate formation mechanism and the factors affecting exchange rate volatility is also very complex, is a nonlinear system, it is difficult to accurately forecast, probabilistic neural network is applied to the frontiers of forecast, and aimed at the characteristics of probabilistic neural network to pretreatment the exchange of data and forecast the tendency. And by changing the vector dimensionality experiment obtain the best entry to embed dimensionality, based on the model, particle swarm optimization algorithm applied in the probabilistic neural network to optimize the smoothing factors, tested and improved the precise prediction and valuable.
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