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Forecasting industrial production using models with business cycle asymmetry

Chan Guk Huh

No 93-12, Working Papers in Applied Economic Theory from Federal Reserve Bank of San Francisco

Abstract: This paper exploits business cycle asymmetry observed in data, namely, a systematic shift in the dynamic relationship between the output and the interest rate spread across expansionary and contractionary periods in forecasting monthly industrial production. A bivariate model of monthly industrial production and the spread between the 6-month commercial paper and the federal funds rates is used as an example to illustrate forecast exercise. This paper's method does not require a forecaster to make an exact ex-ante determination of turning points in the output series which is being forecasted. Comparison of the forecast performance of various two-regime based and conventional models suggests that a measurable gain can be made by considering models which explicitly incorporate asymmetry in data.

Keywords: Business cycles; Industrial productivity; Econometric models (search for similar items in EconPapers)
Date: 1993
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