A bootstrap-based non-parametric forecast density
Manzan, S.
, Zerom, D.
Pages 535-550
AbstractInterest in density forecasts (as opposed to solely modeling the
conditional mean) arises from the possibility of dynamics in higher moments
of a time series, as well as in forecasting the probability of future
events in some applications. By combining the idea of Markov bootstrapping
with that of kernel density estimation, this paper presents a simple
non-parametric method for estimating out-of-sample multi-step density
forecasts. The paper also considers a host of evaluation tests for
examining the dynamic misspecification of estimated density forecasts by
targeting autocorrelation, heteroskedasticity and neglected non-linearity.
These tests are useful, as a rejection of the tests gives insight into ways
to improve a particular forecasting model. In an extensive Monte Carlo
analysis involving a range of commonly used linear and non-linear time
series processes, the non-parametric method is shown to work reasonably
well across the simulated models for a suitable choice of the bandwidth
(smoothing parameter). Furthermore, an application of the method to the
U.S. Industrial Production series provides multi-step density forecasts
that show no sign of dynamic misspecification.
Keywords: Dynamic misspecification
, Evaluation
, Kernel smoothing
, Markov bootstrap
, Multi-step density forecasts