论文标题
时间序列预测的机器学习进步
Machine Learning Advances for Time Series Forecasting
论文作者
论文摘要
在本文中,我们调查了监督机器学习和时间序列预测的高维模型的最新进展。我们考虑线性和非线性替代方案。在线性方法中,我们特别注意惩罚的回归和模型集合。本文中考虑的非线性方法包括浅和深神经网络,在其前馈和经常性版本中以及基于树的方法,例如随机森林和增强的树木。我们还通过结合不同替代品的成分来考虑合奏和混合模型。简要审查了出色预测能力的测试。最后,我们讨论了机器学习在经济学和金融中的应用,并提供了具有高频财务数据的插图。
In this paper we survey the most recent advances in supervised machine learning and high-dimensional models for time series forecasting. We consider both linear and nonlinear alternatives. Among the linear methods we pay special attention to penalized regressions and ensemble of models. The nonlinear methods considered in the paper include shallow and deep neural networks, in their feed-forward and recurrent versions, and tree-based methods, such as random forests and boosted trees. We also consider ensemble and hybrid models by combining ingredients from different alternatives. Tests for superior predictive ability are briefly reviewed. Finally, we discuss application of machine learning in economics and finance and provide an illustration with high-frequency financial data.