This paper overviews maximum likelihood and Gaussian methods of estimating continuous time models used in finance. Since the exact likelihood can be constructed only in special cases, much attention has been devoted to the development of methods designed to approximate the likelihood. These approaches range from crude Euler-type approximations and higher order stochastic Taylor series expansions to more complex polynomial-based expansions and infill approximations to the likelihood based on a continuous time data record. The methods are discussed, their properties are outlined and their relative finite sample performance compared in a simulation experiment with the nonlinear CIR diffusion model, which is popular in empirical finance. Bias correc...
Multivariate continuous time models are now widely used in economics and finance. Empirical applicat...
During the past few decades, continuous time diffusion models have become an integral part of financ...
The purpose of this chapter is to provide a comprehensive treatment of likelihood inference for stat...
Published in Handbook of financial time series, 2008, https://doi.org/10.1007/978-3-540-71297-8_22</...
Published in Handbook of financial time series, 2008, https://doi.org/10.1007/978-3-540-71297-8_22</...
This paper overviews maximum likelihood and Gaussian methods of estimating continuous time models us...
This paper overviews maximum likelihood and Gaussian methods of estimating contin-uous time models u...
This paper proposes a Gaussian estimator for nonlinear continuous time models of the short term inte...
This paper proposes a Gaussian estimator for nonlinear continuous time models of the short term inte...
This dissertation consists of three papers on finite sample properties of the maximum likelihood (ML...
This paper proposes a Gaussian estimator for nonlinear continuous time models of the short term inte...
Over recent years, we have witnessed a rapid development in the body of economic theory with applica...
Continuous time Markov processes, including diffusion, jump-diffusion and Levy jump-diffusion models...
Stochastic differential equations often provide a convenient way to describe the dynamics of economi...
An extensive collection of continuous-time models of the short-term interest rate is evaluated over ...
Multivariate continuous time models are now widely used in economics and finance. Empirical applicat...
During the past few decades, continuous time diffusion models have become an integral part of financ...
The purpose of this chapter is to provide a comprehensive treatment of likelihood inference for stat...
Published in Handbook of financial time series, 2008, https://doi.org/10.1007/978-3-540-71297-8_22</...
Published in Handbook of financial time series, 2008, https://doi.org/10.1007/978-3-540-71297-8_22</...
This paper overviews maximum likelihood and Gaussian methods of estimating continuous time models us...
This paper overviews maximum likelihood and Gaussian methods of estimating contin-uous time models u...
This paper proposes a Gaussian estimator for nonlinear continuous time models of the short term inte...
This paper proposes a Gaussian estimator for nonlinear continuous time models of the short term inte...
This dissertation consists of three papers on finite sample properties of the maximum likelihood (ML...
This paper proposes a Gaussian estimator for nonlinear continuous time models of the short term inte...
Over recent years, we have witnessed a rapid development in the body of economic theory with applica...
Continuous time Markov processes, including diffusion, jump-diffusion and Levy jump-diffusion models...
Stochastic differential equations often provide a convenient way to describe the dynamics of economi...
An extensive collection of continuous-time models of the short-term interest rate is evaluated over ...
Multivariate continuous time models are now widely used in economics and finance. Empirical applicat...
During the past few decades, continuous time diffusion models have become an integral part of financ...
The purpose of this chapter is to provide a comprehensive treatment of likelihood inference for stat...