We propose a new approach to forecasting the term structure of interest rates, which allows to efficiently extract the information contained in a large panel of yields. In particular, we use a large Bayesian Vector Autoregression (BVAR) with an optimal amount of shrinkage towards univariate AR models. The optimal shrinkage is chosen by maximizing the Marginal Likelihood of the model. Focusing on the US, we provide an extensive study on the forecasting performance of the proposed model relative to most of the existing alternative specifications. While most of the existing evidence focuses on statistical measures of forecast accuracy, we also consider alternative measures based on trading schemes and portfolio allocation. We extensively check...
Models based on economic theory have serious problems at forecasting exchange rates better than simp...
We use machine learning, applied mathematics and techniques from modern statistics to refine Dynamic...
US yield curve dynamics are subject to time-variation, but there is ambiguity about its precise form...
We propose a new approach to forecasting the term structure of interest rates, which allows to effic...
We propose a new approach to forecasting the term structure of interest rates, which allows to effic...
In this paper we follow the work of Evans and Marshall and propose new approaches for modelling the ...
We use a Bayesian vector autoregression with stochastic volatility to forecast government bond yield...
We propose a method to produce density forecasts of the term structure of government bond yields tha...
textabstractWe forecast the term structure of U.S. Treasury zero-coupon bond yields by analyzing a r...
none3siPrevious research on the prediction of fiscal aggregates has shown evidence that simple autor...
AbstractPrevious research on the prediction of fiscal aggregates has shown evidence that simple auto...
Models based on economic theory have serious problems at forecasting exchange rates better than simp...
Abstract: Despite powerful advances in yield curve modeling in the last twenty years, little attenti...
Models based on economic theory have serious problems at forecasting exchange rates better than simp...
We use machine learning, applied mathematics and techniques from modern statistics to refine Dynamic...
US yield curve dynamics are subject to time-variation, but there is ambiguity about its precise form...
We propose a new approach to forecasting the term structure of interest rates, which allows to effic...
We propose a new approach to forecasting the term structure of interest rates, which allows to effic...
In this paper we follow the work of Evans and Marshall and propose new approaches for modelling the ...
We use a Bayesian vector autoregression with stochastic volatility to forecast government bond yield...
We propose a method to produce density forecasts of the term structure of government bond yields tha...
textabstractWe forecast the term structure of U.S. Treasury zero-coupon bond yields by analyzing a r...
none3siPrevious research on the prediction of fiscal aggregates has shown evidence that simple autor...
AbstractPrevious research on the prediction of fiscal aggregates has shown evidence that simple auto...
Models based on economic theory have serious problems at forecasting exchange rates better than simp...
Abstract: Despite powerful advances in yield curve modeling in the last twenty years, little attenti...
Models based on economic theory have serious problems at forecasting exchange rates better than simp...
We use machine learning, applied mathematics and techniques from modern statistics to refine Dynamic...
US yield curve dynamics are subject to time-variation, but there is ambiguity about its precise form...