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Model Selection Approach for Time Series Forecasting

机译:时间序列预测模型选择方法

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The model selection aims to estimate the performance of different model candidates in order to choose the most appropriate one. In this study we suggest exploiting specific features of time series for the optimal forecasting model selection such as length, seasonality, trend strength and others. To demonstrate reliability of feature-based approach, forecasting error distribution of LSTM Recurrent Neural Network, Linear Regression model, Holt-Winters model and ARIMA model trained on 250 time series with various characteristics were compared. Results of statistical experiments have demonstrated a significant dependence of a forecasting model on the characteristics of a series. Proposed model selection approach allows formulating a priori recommendations for choosing the optimal forecasting model for the specific time series.
机译:模型选择旨在估计不同模型候选者的性能,以便选择最合适的候选人。在这项研究中,我们建议利用时间序列的特定特征,以获得最佳预测模型选择,如长度,季节性,趋势力和其他。为了展示基于特征的方法的可靠性,对LSTM复发神经网络的预测误差分布,线性回归模型,LINEAR回归模型,Holt-Winters模型和Arima模型进行了培训的各种特征。统计实验的结果表明预测模型对系列特性的显着依赖性。所提出的模型选择方法允许制定用于为特定时间序列选择最佳预测模型的先验建议。

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