This study develops efficient numerical methods for solving jumpdiffusion stochastic delay differential equations and stochastic differential equations with fractional order. In addition, two novel algorithms are developed for the estimation of parameters in the stochastic models. One of the algorithms is based on the implementation of the Bayesian inference and the Markov Chain Monte Carlo method, while the other one is developed by using an implicit numerical scheme integrated with the particle swarm optimization
The development of numerical methods for stochastic differential equations has intensified over the ...
Praca ta jest pracą głownie teoretyczną, zamującą się stochastycznymi równaniami różniczkowymi z pra...
textStochastic control is a broad tool with applications in several areas of academic interest. The...
Abstract. This chapter is an introduction and survey of numerical solution meth-ods for stochastic d...
University of Technology, Sydney. Faculty of Business.This thesis concerns the design and analysis o...
Stochastic differential equations (SDEs) models play a crucial role in many field of science such as...
After a brief review of the Euler and Milstein numerical schemes and their convergence results for s...
We suppose that the price of a firm follows a nonlinear stochastic delay differential equation. We a...
In this thesis, we consider two different aspects in financial option pricing. In the first part, we...
In this dissertation, we consider the problem of simulation of stochastic differential equations dri...
A comprehensive introduction to the core issues of stochastic differential equations and their effec...
In this dissertation, we consider the problem of simulation of stochastic differential equations dri...
Stochastic models play a crucial role in modern finance. With uncertainty built in the models, the s...
This research monograph concerns the design and analysis of discrete-time approximations for stochas...
This thesis is concerned with the construction and enhancement of algorithms involving probability ...
The development of numerical methods for stochastic differential equations has intensified over the ...
Praca ta jest pracą głownie teoretyczną, zamującą się stochastycznymi równaniami różniczkowymi z pra...
textStochastic control is a broad tool with applications in several areas of academic interest. The...
Abstract. This chapter is an introduction and survey of numerical solution meth-ods for stochastic d...
University of Technology, Sydney. Faculty of Business.This thesis concerns the design and analysis o...
Stochastic differential equations (SDEs) models play a crucial role in many field of science such as...
After a brief review of the Euler and Milstein numerical schemes and their convergence results for s...
We suppose that the price of a firm follows a nonlinear stochastic delay differential equation. We a...
In this thesis, we consider two different aspects in financial option pricing. In the first part, we...
In this dissertation, we consider the problem of simulation of stochastic differential equations dri...
A comprehensive introduction to the core issues of stochastic differential equations and their effec...
In this dissertation, we consider the problem of simulation of stochastic differential equations dri...
Stochastic models play a crucial role in modern finance. With uncertainty built in the models, the s...
This research monograph concerns the design and analysis of discrete-time approximations for stochas...
This thesis is concerned with the construction and enhancement of algorithms involving probability ...
The development of numerical methods for stochastic differential equations has intensified over the ...
Praca ta jest pracą głownie teoretyczną, zamującą się stochastycznymi równaniami różniczkowymi z pra...
textStochastic control is a broad tool with applications in several areas of academic interest. The...