Arbeitspapier
Macroeconomic predictions using payments data and machine learning
Predicting the economy's short-term dynamics-a vital input to economic agents' decisionmaking process-often uses lagged indicators in linear models. This is typically sufficient during normal times but could prove inadequate during crisis periods such as COVID-19. This paper demonstrates: (a) that payments systems data which capture a variety of economic transactions can assist in estimating the state of the economy in real time and (b) that machine learning can provide a set of econometric tools to effectively handle a wide variety in payments data and capture sudden and large effects from a crisis. Further, we mitigate the interpretability and overfitting challenges of machine learning models by using the Shapley value-based approach to quantify the marginal contribution of payments data and by devising a novel cross-validation strategy tailored to macroeconomic prediction models.
- Sprache
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Englisch
- Erschienen in
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Series: Bank of Canada Staff Working Paper ; No. 2022-10
- Klassifikation
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Wirtschaft
Forecasting Models; Simulation Methods
Large Data Sets: Modeling and Analysis
Prices, Business Fluctuations, and Cycles: Forecasting and Simulation: Models and Applications
Monetary Systems; Standards; Regimes; Government and the Monetary System; Payment Systems
Monetary Policy
- Thema
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Econometric and statistical methods
Business fluctuations and cycles
Payment clearingand settlement systems
- Ereignis
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Geistige Schöpfung
- (wer)
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Chapman, James
Desai, Ajit
- Ereignis
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Veröffentlichung
- (wer)
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Bank of Canada
- (wo)
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Ottawa
- (wann)
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2022
- DOI
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doi:10.34989/swp-2022-10
- Handle
- Letzte Aktualisierung
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10.03.2025, 11:43 MEZ
Datenpartner
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Objekttyp
- Arbeitspapier
Beteiligte
- Chapman, James
- Desai, Ajit
- Bank of Canada
Entstanden
- 2022