Normal inverse Gaussian (NIG) distribution is quite a new distribution introduced in 1997. This is distribution, which describes evolution of NIG process. It appears that in many cases NIG distribution describes log-returns of stock prices with a high accuracy. Unlike normal distribution, it has higher kurtosis, which is necessary to fit many historical returns. This gives the opportunity to construct precise algorithms for hedging risks of options. The aim of the present research is to evaluate how well NIG distribution can reproduce stock price dynamics and to illuminate future fields of application
In this paper we explore some crude approximation, calibration and estimation procedures for Normal ...
In this paper we explore some crude approximation, calibration and estimation procedures for Normal ...
The normal inverse Gaussian (NIG) distribution is a recent flexible closed form distribution that ma...
The normal inverse Gaussian (NIG) process is a Lévy process with no Brownian component and NIG-distr...
The normal inverse Gaussian (NIG) process is a Lévy process with no Brownian component and NIG-distr...
The normal inverse Gaussian (NIG) process is a Lévy process with no Brownian component and NIG-distr...
We model Normal Inverse Gaussian distributed log-returns with the assumption of stochastic volatilit...
We model Normal Inverse Gaussian distributed log-returns with the assumption of stochastic volatilit...
We model Normal Inverse Gaussian distributed log-returns with the assumption of stochastic volatilit...
We model Normal Inverse Gaussian distributed log-returns with the assumption of stochastic volatilit...
We model Normal Inverse Gaussian distributed log-returns with the assumption of stochastic volatilit...
This paper explores the possibility of using the Normal Inverse Gaussian (NIG) distribution introduc...
Revised June 15, 1998This paper explores the possibility of using the Normal Inverse Gaussian (NIG) ...
Revised June 15, 1998This paper explores the possibility of using the Normal Inverse Gaussian (NIG) ...
We discuss the Normal inverse Gaussian (NIG) distribution in modeling volatility in the financial ma...
In this paper we explore some crude approximation, calibration and estimation procedures for Normal ...
In this paper we explore some crude approximation, calibration and estimation procedures for Normal ...
The normal inverse Gaussian (NIG) distribution is a recent flexible closed form distribution that ma...
The normal inverse Gaussian (NIG) process is a Lévy process with no Brownian component and NIG-distr...
The normal inverse Gaussian (NIG) process is a Lévy process with no Brownian component and NIG-distr...
The normal inverse Gaussian (NIG) process is a Lévy process with no Brownian component and NIG-distr...
We model Normal Inverse Gaussian distributed log-returns with the assumption of stochastic volatilit...
We model Normal Inverse Gaussian distributed log-returns with the assumption of stochastic volatilit...
We model Normal Inverse Gaussian distributed log-returns with the assumption of stochastic volatilit...
We model Normal Inverse Gaussian distributed log-returns with the assumption of stochastic volatilit...
We model Normal Inverse Gaussian distributed log-returns with the assumption of stochastic volatilit...
This paper explores the possibility of using the Normal Inverse Gaussian (NIG) distribution introduc...
Revised June 15, 1998This paper explores the possibility of using the Normal Inverse Gaussian (NIG) ...
Revised June 15, 1998This paper explores the possibility of using the Normal Inverse Gaussian (NIG) ...
We discuss the Normal inverse Gaussian (NIG) distribution in modeling volatility in the financial ma...
In this paper we explore some crude approximation, calibration and estimation procedures for Normal ...
In this paper we explore some crude approximation, calibration and estimation procedures for Normal ...
The normal inverse Gaussian (NIG) distribution is a recent flexible closed form distribution that ma...