时间序列预测中机器学习模型的实证比较

An Empirical Comparison of Machine Learning Models for Time Series Forecasting

Econometric Reviews · 2010
被引 783 · 同刊同年前 1%
人大 A-ABS 3

中文导读

在M3月度时间序列数据上大规模比较了八种机器学习模型,发现多层感知器和高斯过程回归表现最佳,并测试了不同预处理方法的影响。

Abstract

In this work we present a large scale comparison study for the major machine learning models for time series forecasting. Specifically, we apply the models on the monthly M3 time series competition data (around a thousand time series). There have been very few, if any, large scale comparison studies for machine learning models for the regression or the time series forecasting problems, so we hope this study would fill this gap. The models considered are multilayer perceptron, Bayesian neural networks, radial basis functions, generalized regression neural networks (also called kernel regression), K-nearest neighbor regression, CART regression trees, support vector regression, and Gaussian processes. The study reveals significant differences between the different methods. The best two methods turned out to be the multilayer perceptron and the Gaussian process regression. In addition to model comparisons, we have tested different preprocessing methods and have shown that they have different impacts on the performance.

机器学习模型时间序列预测模型比较M3数据