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基于信息冗余检验的支持向量机时间序列预测自由参数选取方法 被引量:3
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作者 于艳华 宋俊德 《物理学报》 SCIE EI CAS CSCD 北大核心 2012年第17期168-181,共14页
支持向量机建模中的一个关键和难点问题是自由参数的设置.不同于以往应用残差的简单统计量选取最佳模型的方法,本文提出通过检验模型在训练集上的拟合残差是否不含冗余信息作为选择自由参数的依据.进一步提出应用全向相关函数(omni-dire... 支持向量机建模中的一个关键和难点问题是自由参数的设置.不同于以往应用残差的简单统计量选取最佳模型的方法,本文提出通过检验模型在训练集上的拟合残差是否不含冗余信息作为选择自由参数的依据.进一步提出应用全向相关函数(omni-directional correlaton function,ODCF)检验残差信息冗余并给出应用方法,并从理论分析和数值仿真两方面给出该方法正确性的证明.在两个典型的非线性时间序列(年均太阳黑子数和Mackey-Glass数据)上进行了实验,实验结果优于相关文献记载及基于校验集方法的预测性能. 展开更多
关键词 支持向量机 自由参数 残差 全向相关函数
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Residuals-Based Deep Least Square Support Vector Machine with Redundancy Test Based Model Selection to Predict Time Series 被引量:1
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作者 Yanhua Yu Jie Li 《Tsinghua Science and Technology》 SCIE EI CAS CSCD 2019年第6期706-715,共10页
In this paper, we propose a novel Residuals-Based Deep Least Squares Support Vector Machine(RBDLSSVM). In the RBD-LSSVM, multiple LSSVMs are sequentially connected. The second LSSVM uses the fitting residuals of the f... In this paper, we propose a novel Residuals-Based Deep Least Squares Support Vector Machine(RBDLSSVM). In the RBD-LSSVM, multiple LSSVMs are sequentially connected. The second LSSVM uses the fitting residuals of the first LSSVM as input time series, and the third LSSVM trains the residuals of the second, and so on. The original time series is the input of the first LSSVM. Additionally, to obtain the best hyper-parameters for the RBD-LSSVM, we propose a model validation method based on redundancy test using Omni-Directional Correlation Function(ODCF). This method is based on the fact when a model is appropriate for a given time series, there should be no information or correlation in the residuals. We propose the use of ODCF as a statistic to detect nonlinear correlation between two random variables. Thus, we can select hyper-parameters without encountering overfitting,which cannot be avoided by only cross validation using the validation set. We conducted experiments on two time series: annual sunspot number series and monthly Total Column Ozone(TCO) series in New Delhi. Analysis of the prediction results and comparisons with recent and past studies demonstrate the promising performance of the proposed RBD-LSSVM approach with redundancy test based model selection method for modeling and predicting nonlinear time series. 展开更多
关键词 time series prediction information REDUNDANCY residuals-based DEEP Least Squares Support Vector Machine (LSSVM) OMNI-DIRECTIONAL Correlation Function (odcf)
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