ST959: Financial Statistics
Availability:
- This is a core module for the MSc in Mathematical Finance.
- Not available to undergraduate students.
- PhD students interested in taking the module should consult the lecturer.
Commitment:
- 30 hours of lectures and 8 hours of lab sessions
Content:
- Part 1: Classical and Bayesian methods of statistical inference (weeks 1-5)
- Properties of random samples
- Statistics, sufficiency and likelihood
- Point estimation, maximum likelihood estimation
- Hypothesis testing and interval estimation
- Elements of Bayesian inference
- Linear models
- Part 2: Time Series (weeks 6-10)
- Auto-regressive and moving average models (ARMA), unit root (ARIMA) and seasonal models (S-ARIMA), heteroscedastic models (GARCH and extensions such as EGARCH, GARCH-M,...) and an introduction to stochastic volatility models.
- Linear and non-linear modelling of financial time series with R: exploratory analysis, model selection, model fitting, model validation and forecasting.
- Illustrative financial applications.
Assessment:
- 1 x 2 hour exam at 80%
- 1 x 15min class test on part 1 of course at 5%
- 1 x project in R on part 2 of course at 15%
Illustrative Bibliography:
Part 1:
-
George Casella, Roger Berger: Statistical Inference, (2002) Cengage Learning; 2nd edition
-
David Ruppert and David S. Matteson: Statistics and Data Analysis for Financial
Engineering: with R examples, Springer; 2nd edition
-
Larry A. Wasserman: All of Statistics: A Concise Course in Statistical Inference, Springer
Part 2:
-
Jonathan D. Cryer and Kung-Sik Chan: (2008) Time Series Analysis: With applications in R,
Spinger, 2nd edition
-
David Ruppert and David S. Matteson: (2015) Statistics and Data Analysis for Financial
Engineering: with R examples, Springer; 2nd edition
-
Ruey S Tsay: (2010) Analysis of Financial times series, Wiley; 3rd edition
-
Financial Econometrics by Christian Gourieroux and Joann Jasiak, Princeton University
Examination Period: January