Forecasting UK consumer price inflation using inflation forecasts |
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Authors: | Hossein Hassani Emmanuel Sirimal Silva |
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Affiliation: | 1. Research Institute of Energy Management and Planning, University of Tehran, Iran;2. Fashion Business School, London College of Fashion, University of the Arts London, UK |
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Abstract: | The inflation rate is a key economic indicator for which forecasters are constantly seeking to improve the accuracy of predictions, so as to enable better macroeconomic decision making. Presented in this paper is a novel approach which seeks to exploit auxiliary information contained within inflation forecasts for developing a new and improved forecast for inflation by modeling with Multivariate Singular Spectrum Analysis (MSSA). Unlike other forecast combination techniques, the key feature of the proposed approach is its use of forecasts, i.e. data into the future, within the modeling process and extracting auxiliary information for generating a new and improved forecast. We consider real data on consumer price inflation in UK, obtained via the Office for National Statistics. A variety of parametric and nonparametric models are then used to generate univariate forecasts of inflation. Thereafter, the best univariate forecast is considered as auxiliary information within the MSSA model alongside historical data for UK consumer price inflation, and a new multivariate forecast is generated. We find compelling evidence which shows the benefits of the proposed approach at generating more accurate medium to long term inflation forecasts for UK in relation to the competing models. Finally, through the discussion, we also consider Google Trends forecasts for inflation within the proposed framework. |
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Keywords: | Consumer price inflation Auxiliary information Multivariate singular spectrum analysis Parametric Nonparametric Forecast |
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