- Series
- Mathematical Finance/Financial Engineering Seminar
- Time
- Wednesday, September 19, 2012 - 3:05pm for 1 hour (actually 50 minutes)
- Location
- Skiles 005
- Speaker
- Frederi Viens – Purdue University
- Organizer
- Christian Houdré
Please Note: Hosts Christian Houdre and Liang Peng
It is commonly accepted that certain financial data exhibit long-range
dependence. A continuous time stochastic volatility model is considered in
which the stock price is geometric Brownian motion with volatility
described by a fractional Ornstein-Uhlenbeck process. Two discrete time
models are also studied: a discretization of the continuous model via an
Euler scheme and a discrete model in which the returns are a zero mean iid
sequence where the volatility is a fractional ARIMA process. A particle
filtering algorithm is implemented to estimate the empirical distribution
of the unobserved volatility, which we then use in the construction of a
multinomial recombining tree for option pricing. We also discuss
appropriate parameter estimation techniques for each model. For the
long-memory parameter, we compute an implied value by calibrating the
model with real data. We compare the performance of the three models using
simulated data and we price options on the S&P 500 index. This is joint
work with Prof. Alexandra Chronopoulou, which appeared in Quantitative
Finance, vol 12, 2012.