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The vector innovation structural times series framework: a simple approach to multivariate forecasting

journal contribution
posted on 2024-11-01, 08:21 authored by Ashton De SilvaAshton De Silva, Rob Hyndman, R Snyder
The vector innovations structural time series framework is proposed as a way of modelling a set of related time series. As with all multivariate approaches, the aim is to exploit potential interseries dependencies to improve the fit and forecasts. The model is based around an unobserved vector of components representing features such as the level and slope of each time series. Equations that describe the evolution of these components through time are used to represent the inter-temporal dependencies. The approach is illustrated on a bivariate dataset comprising Australian exchange rates of the UK pound and US dollar. The forecasting accuracy of the new modelling framework is compared to other common uni- and multivariate approaches in an experiment using time series from a large macroeconomic database.

History

Journal

Statistical Modelling

Volume

10

Issue

4

Start page

353

End page

374

Total pages

22

Publisher

Sage Publications Ltd

Place published

London, United Kingdom

Language

English

Copyright

Copyright © 2010 SAGE Publications

Former Identifier

2006021230

Esploro creation date

2020-06-22

Fedora creation date

2010-12-22

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