基于SCEM-UA算法的SVR参数选择及其在月径流预测中的应用

Liu Ji, W. Bende
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引用次数: 7

摘要

支持向量机(svm)是近年来最流行的机器学习方法之一,但其性能主要取决于最优参数的选择,这是一个非常复杂的问题。本研究采用Vrugt开发的SCEM-UA算法进行支持向量回归(SVR)的参数选择。SCEM-UA算法融合了Metropolis算法、可控随机搜索、竞争进化和复杂洗牌算法的优点,避免了陷入局部极小值的倾向。在一个复杂的非线性径流预测中对该方法进行了验证。结果表明,SCEM-UA算法比网格搜索方法更能成功地识别出SVR的最优参数,并能实现准确的预测。关键词:支持向量机;优化;SCEM-UA;时间序列;预测
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parameters Selection for SVR Based on the SCEM-UA Algorithm and its Application on Monthly Runoff Prediction
Support Vector Machines (SVMs) have become one of the most popular methods in Machine Learning during the last few years, but its performance mainly depends on the selection of optimal parameters which is very complex. In this study, the SCEM-UA algorithm developed by Vrugt is employed for parameters selection of Support Vector Regression (SVR). The SCEM-UA algorithm, which operates by merging the strengths of the Metropolis algorithm, controlled random search, competitive evolution, and complex shuffling, can avoid the tendency of falling into local minima. The proposed method was tested on a complicated nonlinearly runoff forecasting. The results illustrated that SCEM-UA algorithm can successfully identify the optimal parameters of SVR than grid search method, and can achieve an accurate prediction. Keywords: Support Vector Machines; Optimization; SCEM-UA; Time series; Forecasting
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