Time-series forecasting using autoregression enhanced k-nearest neighbors method |
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Authors: | PAN Feng ZHAO Hai-bo LIU Hua-shan |
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Institution: | 1. School of Information Science and Technology, Donghua University, Shanghai 200051, China 2. Institute of Aircraft Equipment, Naval Academy of Armament, Shanghai 200436, China |
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Abstract: | This study proposes two metrics using the nearest neighbors method to improve the accuracy of time-series forecasting. These two metrics can be treated as a hybrid forecasting approach to combine linear and non-linear forecasting techniques. One metric redefines the distance in k-nearest neighbors based on the coefficients of autoregression (AR) in time series. Meanwhile, an improvement to Kulesh’s adaptive metrics in the nearest neighbors is also presented. To evaluate the performance of the two proposed metrics, three types of time-series data, namely deterministic synthetic data, chaotic time-series data and real time-series data, are predicted. Experimental results show the superiority of the proposed AR-enhanced k-nearest neighbors methods to the traditional k-nearest neighbors metric and Kulesh’s adaptive metrics. |
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Keywords: | time series forecasting nearest neighbors method autoregression (AR) metrics |
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