Forecasting Business surveys indicators: neural networks vs. time series models

Publication date

2014-09-30T11:21:21Z

2014-09-30T11:21:21Z

2013

2014-09-30T11:21:21Z

Abstract

The objective of this paper is to compare different forecasting methods for the short run forecasting of Business Survey Indicators. We compare the forecasting accuracy of Artificial Neural Networks -ANN- vs. three different time series models: autoregressions -AR-, autoregressive integrated moving average -ARIMA- and self-exciting threshold autoregressions -SETAR-. We consider all the indicators of the question related to a country’s general situation regarding overall economy, capital expenditures and private consumption -present judgement, compared to same time last year, expected situation by the end of the next six months- of the World Economic Survey -WES- carried out by the Ifo Institute for Economic Research in co-operation with the International Chamber of Commerce. The forecast competition is undertaken for fourteen countries of the European Union. The main results of the forecast competition are offered for raw data for the period ranging from 1989 to 2008, using the last eight quarters for comparing the forecasting accuracy of the different techniques. ANN and ARIMA models outperform SETAR and AR models. Enlarging the observed time series of Business Survey Indicators is of upmost importance in order of assessing the implications of the current situation and its use as input in quantitative forecast models.

Document Type

Working document

Language

English

Publisher

Universitat de Barcelona. Institut de Recerca en Economia Aplicada Regional i Pública

Related items

Reproducció del document publicat a: http://www.ub.edu/irea/working_papers/2013/201320.pdf

IREA – Working Papers, 2013, IR13/20

AQR – Working Papers, 2013, AQR13/12

[WP E-AQR13/12]

[WP E-IR13/20]

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Rights

cc-by-nc-nd, (c) Clavería González et al., 2013

http://creativecommons.org/licenses/by-nc-nd/3.0/