We develop a nonparametric regression-based goodness-of-fit test for multifactor continuous-time Markov models using the conditional characteristic function, which often has a convenient closed form or can be approximated accurately for many popular continuous-time Markov models in economics and finance. An omnibus test fully utilizes the information in the joint conditional distribution of the underlying processes and hence has power against a vast class of continuous-time alternatives in the multifactor framework. A class of easy-to-interpret diagnostic procedures is also proposed to gauge possible sources of model misspecification. All the proposed test statistics have a convenient asymptotic N(0,1) distribution under correct model speci...
This paper gives a selective review on the recent developments of nonparametric methods in continuou...
This article develops three bootstrap-based tests for a parametric form of volatil- ity function in ...
This paper overviews maximum likelihood and Gaussian methods of estimating continuous time models us...
We develop a nonparametric regression-based goodness-of-fit test for multifactor continuous-time Mar...
Markov processes are used in a wide range of disciplines, including finance. The transition densitie...
We propose two nonparametric transition density-based speciÞcation tests for continuous-time diffusi...
This paper introduces a new parameter estimator of dynamic models in which the state is a multidimen...
Markov processes are used in a wide range of disciplines, including finance. The transition densitie...
We develop a nonparametric specification test for multivariate continuous-time models us-ing the con...
I propose a new non-parametric testing procedure to determine whether or not an underlying continuou...
Continuous time Markov processes, including diffusion, jump-diffusion and Levy jump-diffusion models...
We propose two nonparametric transition density-based specification tests for continuous-time diffus...
This paper develops a framework to nonparametrically test whether discretevalued irregularly-spaced ...
We propose an optimal test procedure for testing the marginal density functions of a class of nonlin...
We propose two newtests for the specification of both the drift and the diffusion functions in a dis...
This paper gives a selective review on the recent developments of nonparametric methods in continuou...
This article develops three bootstrap-based tests for a parametric form of volatil- ity function in ...
This paper overviews maximum likelihood and Gaussian methods of estimating continuous time models us...
We develop a nonparametric regression-based goodness-of-fit test for multifactor continuous-time Mar...
Markov processes are used in a wide range of disciplines, including finance. The transition densitie...
We propose two nonparametric transition density-based speciÞcation tests for continuous-time diffusi...
This paper introduces a new parameter estimator of dynamic models in which the state is a multidimen...
Markov processes are used in a wide range of disciplines, including finance. The transition densitie...
We develop a nonparametric specification test for multivariate continuous-time models us-ing the con...
I propose a new non-parametric testing procedure to determine whether or not an underlying continuou...
Continuous time Markov processes, including diffusion, jump-diffusion and Levy jump-diffusion models...
We propose two nonparametric transition density-based specification tests for continuous-time diffus...
This paper develops a framework to nonparametrically test whether discretevalued irregularly-spaced ...
We propose an optimal test procedure for testing the marginal density functions of a class of nonlin...
We propose two newtests for the specification of both the drift and the diffusion functions in a dis...
This paper gives a selective review on the recent developments of nonparametric methods in continuou...
This article develops three bootstrap-based tests for a parametric form of volatil- ity function in ...
This paper overviews maximum likelihood and Gaussian methods of estimating continuous time models us...