This paper presents a comparison of prediction performances of three kernel-based non-parametric methods applied to the US weekly T-bill rate. Predictions are generated through the rolling approach for the out-of-sample period 1989-1993. The multistep-ahead prediction performance of the three predictors is compared with two benchmarks: a random walk (RW) and an AR model. To this end five prediction evaluation criteria are considered including sign accuracy. Further, two prediction intervals are proposed based on the estimation nonparametric conditional distribution function. Finally, the choice of the bandwidth in the kernel-based prediction methods is assessed through two methods for evaluating the estimated prediction densities
The primary objective of this article is to compare the forecasting ability of some recent parametri...
The Chan, Karolyi, Longstaff and Sanders (CKLS) model is a popular one-factor model for describing t...
The author investigates the forecasting performance of a number of simple prediction techniques for ...
This paper presents a comparison of prediction performances of threekernel-based nonparametric metho...
In this paper the use of three kernel-based nonparametric forecasting methods - the conditional mean...
We employ a nonlineal: nonparametric method to model the stochastic behavior of changes in several s...
We employ a nonlinear, nonparametric method to model the stochastic behavior of changes in several s...
This study examines whether information contained in the term structure of interest rates can be use...
We present a multi-stage conditional quantile predictor for time series of Markovian structure. It i...
In this paper we compare the forecasting performance of different models of interest rates using par...
Nonparametric kernel density estimation has recently been used to estimate and test short-term inter...
This paper assesses the performance of a number of long-term interest rate forecast approaches, name...
This paper studies the finite sample properties of the kernel regression method of Boudoukh et al. (...
We employ a nonlinear, nonparametric method to model the stochastic behavior of changes in several s...
In this paper we propose a smooth transition tree model for both the conditional mean and variance o...
The primary objective of this article is to compare the forecasting ability of some recent parametri...
The Chan, Karolyi, Longstaff and Sanders (CKLS) model is a popular one-factor model for describing t...
The author investigates the forecasting performance of a number of simple prediction techniques for ...
This paper presents a comparison of prediction performances of threekernel-based nonparametric metho...
In this paper the use of three kernel-based nonparametric forecasting methods - the conditional mean...
We employ a nonlineal: nonparametric method to model the stochastic behavior of changes in several s...
We employ a nonlinear, nonparametric method to model the stochastic behavior of changes in several s...
This study examines whether information contained in the term structure of interest rates can be use...
We present a multi-stage conditional quantile predictor for time series of Markovian structure. It i...
In this paper we compare the forecasting performance of different models of interest rates using par...
Nonparametric kernel density estimation has recently been used to estimate and test short-term inter...
This paper assesses the performance of a number of long-term interest rate forecast approaches, name...
This paper studies the finite sample properties of the kernel regression method of Boudoukh et al. (...
We employ a nonlinear, nonparametric method to model the stochastic behavior of changes in several s...
In this paper we propose a smooth transition tree model for both the conditional mean and variance o...
The primary objective of this article is to compare the forecasting ability of some recent parametri...
The Chan, Karolyi, Longstaff and Sanders (CKLS) model is a popular one-factor model for describing t...
The author investigates the forecasting performance of a number of simple prediction techniques for ...