A New Predictive Algorithm for Time Series Forecasting Based on Machine Learning Techniques: Evidence for Decision Making in Agriculture and Tourism Sectors

IF 0.9 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Stats Pub Date : 2022-11-16 DOI:10.3390/stats5040068
Juan Borrero, J. Mariscal, Alfonso Vargas-Sánchez
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引用次数: 2

Abstract

Accurate time series prediction techniques are becoming fundamental to modern decision support systems. As massive data processing develops in its practicality, machine learning (ML) techniques applied to time series can automate and improve prediction models. The radical novelty of this paper is the development of a hybrid model that combines a new approach to the classical Kalman filter with machine learning techniques, i.e., support vector regression (SVR) and nonlinear autoregressive (NAR) neural networks, to improve the performance of existing predictive models. The proposed hybrid model uses, on the one hand, an improved Kalman filter method that eliminates the convergence problems of time series data with large error variance and, on the other hand, an ML algorithm as a correction factor to predict the model error. The results reveal that our hybrid models obtain accurate predictions, substantially reducing the root mean square and absolute mean errors compared to the classical and alternative Kalman filter models and achieving a goodness of fit greater than 0.95. Furthermore, the generalization of this algorithm was confirmed by its validation in two different scenarios.
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基于机器学习技术的时间序列预测新算法:农业和旅游部门决策的证据
准确的时间序列预测技术正在成为现代决策支持系统的基础。随着大规模数据处理在实用性方面的发展,应用于时间序列的机器学习(ML)技术可以自动化和改进预测模型。本文的根本新颖之处在于开发了一种混合模型,该模型将经典卡尔曼滤波的新方法与机器学习技术(即支持向量回归(SVR)和非线性自回归(NAR)神经网络)相结合,以提高现有预测模型的性能。该混合模型一方面采用改进的卡尔曼滤波方法消除了误差方差较大的时间序列数据的收敛性问题,另一方面采用ML算法作为修正因子预测模型误差。结果表明,我们的混合模型获得了准确的预测,与经典和替代卡尔曼滤波模型相比,大大降低了均方根和绝对均值误差,拟合优度大于0.95。通过两种不同场景下的验证,验证了该算法的泛化性。
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CiteScore
0.60
自引率
0.00%
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0
审稿时长
7 weeks
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