Instructional goals
After following this course, students should be able to:
- Evaluate and reflect upon empirical studies using financial markets data.
- Apply econometric methods in analysing prices, returns and volatilities from financial markets.
- Generalise the results from empirical analyses to financial market theories.
- Adopt a computational tool (MATLAB) for the implementation of econometric methods for the analysis of financial time series.
Prerequisites
The prerequisites are:
- Applied Statistics and Econometrics
- Econometric Theory
- MATLAB
Intended learning outcomes
Knowledge and understanding:
The course will offer theoretical and empirical tools to analyze financial data. This course provides advanced
knowledge and analytical resources that will enable students to understand and test autonomously the
implications of the main financial theories and to construct efficient and robust prections of key financial variables, such as volatility.
Applying knowledge and understanding:
The students will be able to:
• Carry out univariate and multivariate time series analysis of financial variables
• Determine the fair price of various financial instruments such as derivatives
• Establish the effect of macroeconmic announcements (or of other specific events) on financial prices (event studies analysis)
Making judgements:
We expect students to be able to analyze financial models to demonstrate
a critical understanding of the scope and empirical challenges of
financial theories, through their empirical assessment with
the application of econometric methods to real data.
Students are asked to use the software MATLAB to gain insights on the econometric methodologies and their implementation
Learning skills:
This course will contribute to empower learners giving them the theoretical, econometric and programming tools to autonomously study financial data and verify financial theories.
Course Contents
1) The econometrics of univariate and multivariate time series models
2) Volatility modeling:
a) Univariate GARCH models
b) Multivariate GARCH models
3) The predictability of asset returns
4) Market Microstructure and ex-post volatility modeling
5) Event Study Analysis
6) Asset pricing models: theory and empirical validation (CAPM, APT, multifactor models, CCAPM)
7) Present value relations
8) Option Pricing
Reference Books
Main references:
- John Y. Campbell, Andrew W. Lo, Archie Craig Mackinlay, The Econometrics of Financial Markets, Princeton University Press 1996
- Christian Gourieroux and Joann Jasiak, Financial Econometrics: Problems, Models, and Methods,
Princeton University Press, 2001
- Oliver Linton, Financial Econometrics: Models and Methods, Cambridge, 2019
- Specific material for the first part of the course on the econometrics of time series will be provided by the teacher
Teaching Methods
Lectures on relevant empirical issues. Students’ participation during lectures is strongly encouraged and will be considered in the final assessment. Weekly assignments require the use of MATLAB to solve empirical exercises based on real data.
Assessment Method
Oral exam + weekly problem sets + take home assignment
Thesis assignment criteria
None
Week 1 Contenuto sessioni on line e on campus
Introduction to univariate time-series analysis, random walk.
Week 2 Contenuto sessioni on line e on campus
ARMA, testing for unit-root
Week 3 Contenuto sessioni on line e on campus
Stylised facts of asset returns, return predictability and testing EMH
Week 4 Contenuto sessioni on line e on campus
Volatility modeling: univariate
Week 5 Contenuto sessioni on line e on campus
Market Microstructure, multiplicative error models
Week 6 Contenuto sessioni on line e on campus
Risk management: dynamic quantile regression
Week 7 Contenuto sessioni on line e on campus
Asset pricing models: CAPM
Week 8 Contenuto sessioni on line e on campus
Trading on signals.
Week 9 Contenuto sessioni on line e on campus
The vector autoregressive model: properties and estimation.
Cointegration, cointegrated systems, estimation and testing
Week 10 Contenuto sessioni on line e on campus
Volatility modeling: multivariate
Week 11 Contenuto sessioni on line e on campus
Derivatives pricing models: B&S
Week 12 Contenuto sessioni on line e on campus
Derivative pricing models: beyond B&S