Forecast combination for discrete choice models: predicting FOMC monetary policy decisions
Laurent Pauwels and
Andrey Vasnev
No 11/2011, Working Papers from University of Sydney Business School, Discipline of Business Analytics
Abstract:
This paper provides a methodology for combining forecasts based on several discrete choice models. This is achieved primarily by combining one-step-ahead probability forecast associated with each model. The paper applies well-established scoring rules for qualitative response models in the context of forecast combination. Log-scores and quadratic-scores are both used to evaluate the forecasting accuracy of each model and to combine the probability forecasts. In addition to producing point forecasts, the effect of sampling variation is also assessed. This methodology is applied to forecast the US Federal Open Market Committee (FOMC) decisions in changing the federal funds target rate. Several of the economic fundamentals influencing the FOMC decisions are nonstationary over time and are modelled in a similar fashion to Hu and Phillips (2004a, JoE). The empirical results show that combining forecasted probabilities using scores mostly outperforms both equal weight combination and forecasts based on multivariate models.
Keywords: Forecast combination; Probability forecast; Discrete choice models; Monetary policy decisions (search for similar items in EconPapers)
Date: 2011-06
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Citations: View citations in EconPapers (3)
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http://hdl.handle.net/2123/8158
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Journal Article: Forecast combination for discrete choice models: predicting FOMC monetary policy decisions (2017) 
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