This article makes two contributions. First, we outline a simple simulation-based framework for constructing conditional distributions for multifactor and multidimensional diffusion processes, for the case where the functional form of the conditional density is unknown. The distributions can be used, for example, to form predictive confidence intervals for time period t + τ, given information up to period t. Second, we use the simulation-based approach to construct a test for the correct specification of a diffusion process. The suggested test is in the spirit of the conditional Kolmogorov test of Andrews. However, in the present context the null conditional distribution is unknown and is replaced by its simulated counterpart. The limiting ...
In this paper, we propose some algorithms for the simulation of the distribution of certain diffusio...
We propose two nonparametric transition density-based specification tests for continuous-time diffus...
The objective of the paper is to present a novel methodology for likelihood-based inference for disc...
This article makes two contributions. First, we outline a simple simulation-based framework for cons...
The technique of using densities and conditional distributions to carry out consistent specification...
This paper introduces bootstrap specification tests for diffusion processes. In the one-dimensional ...
Abstract: This paper evaluates the use of the nonparametric kernel method for testing specification ...
We propose a test for model specification of a parametric diffusion process based on a kernel estima...
This paper develops tests for comparing the accuracy of predictive densities derived from (possibly ...
We propose an optimal test procedure for testing the marginal density functions of a class of nonlin...
This paper develops a new econometric method to estimate continuous time processes from discretely s...
A new class of specification tests for stochastic differential equations (SDE) is proposed to determ...
© Springer-Verlag Berlin Heidelberg 2013. All rights are reserved. Diffusion processes are a pr...
This article focuses on two methods to approximate the loglikelihood function for univariate diffusi...
We propose two nonparametric transition density-based speciÞcation tests for continuous-time diffusi...
In this paper, we propose some algorithms for the simulation of the distribution of certain diffusio...
We propose two nonparametric transition density-based specification tests for continuous-time diffus...
The objective of the paper is to present a novel methodology for likelihood-based inference for disc...
This article makes two contributions. First, we outline a simple simulation-based framework for cons...
The technique of using densities and conditional distributions to carry out consistent specification...
This paper introduces bootstrap specification tests for diffusion processes. In the one-dimensional ...
Abstract: This paper evaluates the use of the nonparametric kernel method for testing specification ...
We propose a test for model specification of a parametric diffusion process based on a kernel estima...
This paper develops tests for comparing the accuracy of predictive densities derived from (possibly ...
We propose an optimal test procedure for testing the marginal density functions of a class of nonlin...
This paper develops a new econometric method to estimate continuous time processes from discretely s...
A new class of specification tests for stochastic differential equations (SDE) is proposed to determ...
© Springer-Verlag Berlin Heidelberg 2013. All rights are reserved. Diffusion processes are a pr...
This article focuses on two methods to approximate the loglikelihood function for univariate diffusi...
We propose two nonparametric transition density-based speciÞcation tests for continuous-time diffusi...
In this paper, we propose some algorithms for the simulation of the distribution of certain diffusio...
We propose two nonparametric transition density-based specification tests for continuous-time diffus...
The objective of the paper is to present a novel methodology for likelihood-based inference for disc...