- 저자Kang, W,, Kang, C.
-
학술지Stochastic processes and their applications 124(6), 2188-2227
- 등재유형
- 게재일자(2014)
This paper proves the large deviation principle for affine diffusion processes with initial values in the interior of the state space $\mathbb{R}^m_{+} \times \mathbb{R}^n$. We approach this problem in two different ways. In the first approach, we first prove the large deviation principle for finite dimensional distributions, and then use it to establish the sample path large deviation principle. For this approach, a more careful examination of the affine transform formula is required. The second approach exploits the exponential martingale method of Donati-Martin et al. for the squares of Ornstein-Uhlenbeck processes. We provide an application to importance sampling of affine diffusion models.
This paper proves the large deviation principle for affine diffusion processes with initial values in the interior of the state space $\mathbb{R}^m_{+} \times \mathbb{R}^n$. We approach this problem in two different ways. In the first approach, we first prove the large deviation principle for finite dimensional distributions, and then use it to establish the sample path large deviation principle. For this approach, a more careful examination of the affine transform formula is required. The second approach exploits the exponential martingale method of Donati-Martin et al. for the squares of Ornstein-Uhlenbeck processes. We provide an application to importance sampling of affine diffusion models.