Machine Learning Advances for Time Series Forecasting

被引:188
作者
Masini, Ricardo P. [1 ,2 ]
Medeiros, Marcelo C. [3 ]
Mendes, Eduardo F. [4 ]
机构
[1] Princeton Univ, Ctr Stat & Machine Learning, Princeton, NJ 08544 USA
[2] Getulio Vargas Fdn, Sao Paulo Sch Econ, Sao Paulo, Brazil
[3] Pontifical Catholic Univ Rio de Janeiro, Dept Econ, Rio De Janeiro, Brazil
[4] Getulio Vargas Fdn, Sch Appl Math, Sao Paulo, Brazil
关键词
bagging; boosting; deep learning; forecasting; machine learning; neural networks; nonlinear models; penalized regressions; random forests; regression trees; regularization; sieve approximation; statistical learning theory; NEURAL-NETWORK MODELS; VECTOR AUTOREGRESSIVE PROCESSES; LINEAR-MODELS; VARIABLE SELECTION; ADAPTIVE LASSO; MACROECONOMIC VARIABLES; ORACLE INEQUALITIES; SUBSET-SELECTION; LONG-MEMORY; REGRESSION;
D O I
10.1111/joes.12429
中图分类号
F [经济];
学科分类号
02 ;
摘要
In this paper, we survey the most recent advances in supervised machine learning (ML) 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 feedforward 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 ML in economics and finance and provide an illustration with high-frequency financial data.
引用
收藏
页码:76 / 111
页数:36
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