Tesis
Bayesian inference for term structure models
Fecha
2022-06-09Registro en:
Autor
Martins, Thomas Correa e Silva
Institución
Resumen
We explore recent advances in Bayesian methods in order to estimate the Vasicek, CIR and
dynamic Nelson-Siegel (DNS) models for term structure of interest rates. The models are
specified as state space time series. The main goal of this work is assessing and comparing the
forecasting abilities of each model with respect to the observed data via mean absolute error.
When estimated with synthetic simulated datasets, the models are able to successfully recover
the latent vectors. As for the forecasting abilities, the multifactor models generally deliver the
best predictions. The relevance of this work lies in integrating novel computational techniques
for Bayesian inference with canonical models from the field of financial economics. Several
aspects of both fields are discussed throughout the text.