Monash University
Browse
wp06-2018.pdf (2.31 MB)

Meta-learning how to forecast time series

Download (2.31 MB)
journal contribution
posted on 2022-11-09, 04:38 authored by Thiyanga S Talagala, Rob J Hyndman, George Athanasopoulos
A crucial task in time series forecasting is the identification of the most suitable forecasting method. We present a general framework for forecast-model selection using meta-learning. A random forest is used to identify the best forecasting method using only time series features. The framework is evaluated using time series from the M1 and M3 competitions and is shown to yield accurate forecasts comparable to several benchmarks and other commonly used automated approaches of time series forecasting. A key advantage of our proposed framework is that the time-consuming process of building a classifier is handled in advance of the forecasting task at hand.

History

Classification-JEL

C10, C14, C22

Creation date

2018-05-01

Working Paper Series Number

6/18

Length

29

File-Format

application/pdf

Handle

RePEc:msh:ebswps:2018-6