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Incorporating short data into large mixed-frequency VARs for regional nowcasting

Koop, Gary, McIntyre, Stuart, Mitchell, James, Poon, Aubrey, Wu, Ping (2023) Incorporating short data into large mixed-frequency VARs for regional nowcasting. Journal of the Royal Statistical Society: Series A (Statistics in Society), 187 (2). pp. 477-495. ISSN 0964-1998. E-ISSN 1467-985X. (doi:10.1093/jrsssa/qnad130) (KAR id:103429)

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Abstract

Interest in regional economic issues coupled with advances in administrative data is driving the creation of new regional economic data. Many of these data series could be useful for nowcasting regional economic activity, but they suffer from a short (albeit constantly expanding) time series which makes incorporating them into nowcasting models problematic. Regional nowcasting is already challenging because the release delay on regional data tends to be greater than that at the national level, and “short” data imply a “ragged edge” at both the beginning and the end of regional data sets, which adds a further complication. In this paper, via an application to the UK, we investigate various ways of including a wide range of short data into a regional mixedfrequency VAR model. These short data include hitherto unexploited regional VAT turnover data. We address the problem of the ragged edge at both the beginning and end of our sample by estimating regional factors using different missing data algorithms that we then incorporate into our mixed-frequency VAR model. We find that nowcasts of regional output growth are generally improved when we condition them on the factors, but only when the regional nowcasts are produced before the national (UK-wide) output growth data are published.

Item Type: Article
DOI/Identification number: 10.1093/jrsssa/qnad130
Uncontrolled keywords: regional data, mixed-frequency data, missing data, nowcasting, factors, Bayesian methods, real-time data, vector autoregressions, JEL Codes: C32, C53, E37
Subjects: H Social Sciences
Divisions: Divisions > Division of Human and Social Sciences > School of Economics
Funders: Office for National Statistics (https://ror.org/021fhft25)
Depositing User: Aubrey Poon
Date Deposited: 25 Oct 2023 10:10 UTC
Last Modified: 22 Apr 2024 11:21 UTC
Resource URI: https://kar.kent.ac.uk/id/eprint/103429 (The current URI for this page, for reference purposes)

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