A dynamic Nelson-Siegel model with forward-looking indicators for the yield curve in the US
Fausto Vieira and
Marcelo Fernandes Fernando Chague
Authors registered in the RePEc Author Service: Fernando Chague and
Marcelo Fernandes
No 2016_31, Working Papers, Department of Economics from University of São Paulo (FEA-USP)
Abstract:
This paper proposes a Factor-Augmented Dynamic Nelson-Siegel (FADNS) model to predict the yield curve in the US that relies on a large data set of weekly financial and macroeconomic variables. The FADNS model significantly improves interest rate forecasts relative to the extant models in the literature. For longer horizons, it beats autoregressive alternatives, with a reduction in mean absolute error of up to 40%. For shorter horizons, it offers a good challenge to autoregressive forecasting models, outperforming them for the 7- and 10-year yields. The out-of-sample analysis shows that the good performance comes mostly from the forward-looking nature of the variables we employ. Including them reduces the mean absolute error in 5 basis points on average with respect to models that reflect only past macroeconomic events.
Date: 2016-12-07
New Economics Papers: this item is included in nep-for
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Related works:
Working Paper: A dynamic Nelson-Siegel model with forward-looking indicators for the yield curve in the US (2017) 
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