A hybrid model based on support vector regression and modified harmony search algorithm in time series prediction

Samaneh Misaghi, Omid Sojoodi Sheijani
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引用次数: 2

Abstract

Support vector regression (SVR) model has been widely applied to time series prediction. Due to the inherent non linearity and non-stationary characteristics of financial time series, conventional modeling techniques such as the Box-Jenkins autoregressive integrated moving average are not adequate for financial time series prediction. In this paper a hybrid model based on modified harmony search algorithm, and support vector regression (SVR) is proposed to predict financial time series. One of the problems in using support vector regression model is to determine the parameter values of SVR that in the proposed model, modified harmony search algorithm is used to optimize SVR parameters using search in the problem space finds the optimum values for each parameter. Then the optimized SVR is used to predict financial time series. The proposed method is tested on two sets of reliable financial datasets and experimental results on time series data show that the proposed model improved accuracy of prediction compared to other optimization methods.
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基于支持向量回归和改进和谐搜索算法的时间序列预测混合模型
支持向量回归(SVR)模型已广泛应用于时间序列预测。由于金融时间序列固有的非线性和非平稳特性,Box-Jenkins自回归积分移动平均等传统建模技术并不适合于金融时间序列预测。本文提出了一种基于改进和谐搜索算法和支持向量回归(SVR)的混合模型来预测金融时间序列。使用支持向量回归模型的问题之一是确定支持向量回归的参数值,在该模型中,采用改进的和声搜索算法对支持向量回归的参数进行优化,通过在问题空间中搜索找到每个参数的最优值。然后利用优化后的支持向量回归对金融时间序列进行预测。在两组可靠的金融数据集上进行了测试,时间序列数据的实验结果表明,与其他优化方法相比,所提模型的预测精度得到了提高。
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