Monash University
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FFORMA: Feature-based forecast model averaging

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posted on 2022-11-09, 05:21 authored by Pablo Montero-Manso, George Athanasopoulos, Rob J Hyndman, Thiyanga S Talagala
We propose an automated method for obtaining weighted forecast combinations using time series features. The proposed approach involves two phases. First, we use a collection of time series to train a meta-model to assign weights to various possible forecasting methods with the goal of minimizing the average forecasting loss obtained from a weighted forecast combination. The inputs to the meta-model are features extracted from each series. In the second phase, we forecast new series using a weighted forecast combination where the weights are obtained from our previously trained meta-model. Our method outperforms a simple forecast combination, and outperforms all of the most popular individual methods in the time series forecasting literature. The approach achieved second position in the M4 competition.

History

Classification-JEL

C10, C14, C22

Creation date

2018-11-01

Working Paper Series Number

19/18

Length

9 pp

File-Format

application/pdf

Handle

RePEc:msh:ebswps:2018-19

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