Narrow money and the business cycle: theoretical aspects and euro area evidence (original) (raw)
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Narrow Money and the Business Cycle: Theoretical aspects and euro area evdence
2003
This paper analyses the information content of M1 for euro area real GDP since the beginning of the 1980s. After a literature review on the empirical results in individual euro area countries we review some theoretical arguments why real narrow money growth might be an important determinant of cyclical developments in real GDP beyond effects already captured by short-term interest rates. In the empirical part we first present some preliminary evidence on the M1-GDP connection against the background of the situation in the US, based on an approach developed by Hamilton and Kim 2002. This test suggests that compared with the U.S., in the euro area, M1 has better and more robust forecasting properties than the term spread. These properties are also maintained when looking at a broader set of non-monetary indicator variables. Narrow money therefore seems crucial for cyclical developments. We also evaluate the relative out-of-sample forecasting performance of different classes of VAR mod...
Forecasting real GDP: What role for narrow money?
2003
This paper analyses the information content of M1 for euro area real GDP since the beginning of the 1980s and reviews theoretical arguments on why real narrow money should help predict real GDP. We find that, unlike in the U.S., in the euro area, M1 has better and more robust forecasting properties for real GDP than yield spreads. This property
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Is Broader Better? A Monetary Approach to Forecasting Economic Activity
SSRN Electronic Journal, 2021
This paper investigates whether the use of broader Divisia monetary aggregates improves money's performance in forecasting economic activity within a time-varying parameter vector autoregressive (TVP-VAR) framework. We evaluate entire predictive densities from several alternative models of US output growth and inflation, each using eight different Divisia monetary aggregates. Using the broadest, M4 aggregate produces out-of-sample forecasts which consistently outperform those based on narrower measures of money, pooling of forecasts from several models, and a large-scale, 143-variable model. Our results show that TVP-VARs with Divisia M4 forecast economic activity more accurately than constant-parameter models with alternative or no measures of money.
Money As An Indicator In the Euro Zone
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Do financial variables help forecasting inflation and real activity in the euro area?
Journal of Monetary Economics, 2003
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Money and Monetary Policy in the Eurozone: An Empirical Analysis During Crises
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