Improvement of LS-SVM for time series prediction

Bo Wang, Qinghong Shi, Qian Mei
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引用次数: 2

Abstract

Improving the accuracy and speed has become a main concern of time-series prediction. Aiming at these problems existing in time-series prediction, three kinds of researches and improvements are made as follows. This paper proposes a prediction method of combining Empirical Mode Decomposition (EMD) with least squares support vector machines (LS-SVM), the experimental results show that under the same conditions, the testing error of EMD combining with LS-SVM method is 0.1943 which significantly better than any single method of LS-SVM or SVM or BP neural network (BPNN), thus it is better for non-stationary time series. The immune clonal memetic algorithm (ICMA) is employed for resolving the parameter optimization problem in LS-SVM model, by combining global optimization with local optimization, the experiments show that the testing error of this method is 0.0865, which is faster than the optimization with the genetic algorithm (GA) or grid search algorithm. To raise the prediction speed, an improved LS-SVM online prediction method is proposed, which combine selective pruning algorithm with fast incremental learning, the results of experiment show that the speed of this method is improved nearly double compared with the direct inverse LS-SVM's, and a quarter is raised than the recursive inversion LS-SVM, with higher real-time performance while ensuring the reasonable prediction accuracy.
LS-SVM在时间序列预测中的改进
提高时间序列预测的准确性和速度已成为时间序列预测的主要问题。针对时间序列预测中存在的这些问题,本文进行了以下三方面的研究和改进。本文提出了一种将经验模态分解(EMD)与最小二乘支持向量机(LS-SVM)相结合的预测方法,实验结果表明,在相同条件下,EMD与LS-SVM方法相结合的测试误差为0.1943,明显优于LS-SVM或SVM或BP神经网络(BPNN)的任何单一方法,从而更好地预测非平稳时间序列。采用免疫克隆模因算法(ICMA)解决LS-SVM模型中的参数优化问题,将全局优化与局部优化相结合,实验表明,该方法的测试误差为0.0865,比遗传算法(GA)或网格搜索算法的优化速度更快。为了提高预测速度,提出了一种改进的LS-SVM在线预测方法,该方法将选择性剪枝算法与快速增量学习相结合,实验结果表明,该方法的速度比直接逆LS-SVM提高了近一倍,比递推逆LS-SVM提高了四分之一,在保证合理预测精度的同时具有更高的实时性。
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