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Nonparametric Regression Algorithm for Short-term Traffic Flow Forecasting Based on Data Reduction and Support Vector Machine |
WU Jin-wu1,4, ZHANG Hai-feng2, RAN Xu-dong3 |
1. College of Intelligence and Computing, TianjinUniversity, TianJin 300072, China; 2. BeiJing Institute of Space Science and Technology Information, BeiJing 100094, China; 3. College of Management and Economics, TianjinUniversity, TianJin 300072, China; 4. ShenZhen e-Traffic Technology Co., LTD, ShenZhen Guangzhou 518057, China |
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Abstract Nonparametric regression is an important method for short-term traffic flow forecasting, but the traditional nonparametric regression method needs a large storage space and slow query speed when the data are large and the dimension is high. In this paper, an improved nonparametric regression traffic flow forecasting algorithm is proposed. Subtraction fuzzy clustering method is used to cluster historical data to reduce the amount of data in the pattern database. Principal component analysis (PCA) is used to reduce the dimension of the pattern to overcome the problems of slow matching speed and interference of irrelevant dimension caused by the high dimension of the pattern. The support vector machine method is used to estimate the value of the final predicted variables by searching the patterns. The operation efficiency and prediction accuracy of the algorithm are improved. An online simulation-based test shows that the algorithm exhibits better efficiency and accuracy compared with traditional methods.
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Received: 18 December 2019
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Fund:Supported by the National Natural Science Foundation of China (No.71571132) |
Corresponding Authors:
WU Jin-wu
E-mail: wjwhh@qq.com
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