IB9KC-15 Financial Econometrics
Introductory description
The purpose of this module is to provide a general introduction to econometric techniques used for modeling and understanding financial markets. Upon finishing the module, students should have a solid grasp of several important models in financial econometrics.
Module aims
The aim is to introduce the main tools and approaches to estimation and inference of financial and economic models.
Outline syllabus
This is an indicative module outline only to give an indication of the sort of topics that may be covered. Actual sessions held may differ.
The module includes a selection of the following topics:
- Linear Regression
- Instrumental Variables
- Maximum Likelihood Estimation
- High-Frequency Data and Econometrics
- Cross Section of Expected Returns
- Observable or Unobservable Factor Model, and Factor Construction in Practice
- State-Space Models and Filtering
- Econometrics of Options
- Generalized Method of Moments Estimation
- Hedging Climate Risks
- Additional Advanced Topic
Learning outcomes
By the end of the module, students should be able to:
- Demonstrate understanding of mathematical and statistical tools and techniques used in quantitative finance
- Think quantitatively and critically
Indicative reading list
- John Y. Campbell: Financial Decisions and Markets, Princeton University Press. 2017
- John Y. Campbell, Andrew W. Lo and A. Craig MacKinlay: The Econometrics of Financial Markets, Princeton University Press.
- Yacine Aït-Sahalia and Jean Jacod: High Frequency Financial Econometrics, Princeton University Press. 2014
- John H. Cochrane: Asset Pricing, Princeton University Press. 2005.
- James D. Hamilton: Time Series Analysis, Princeton University Press.
- Stephen J. Taylor: Asset Price Dynamics, Volatility and Prediction, Princeton University Press. 2007
Interdisciplinary
Contents from several disciplines, such as economics, finance, and statistics, are included in the module.
Subject specific skills
Estimate quantitative models and conduct statistical inference
Analyze different data structures using relevant models
Transferable skills
Problem solving
Study time
| Type | Required |
|---|---|
| Lectures | 9 sessions of 2 hours (12%) |
| Seminars | 8 sessions of 1 hour (5%) |
| Private study | 51 hours (34%) |
| Assessment | 73 hours (49%) |
| Total | 150 hours |
Private study description
pre-reading
Costs
No further costs have been identified for this module.
You do not need to pass all assessment components to pass the module.
Assessment group D3
| Weighting | Study time | Eligible for self-certification | |
|---|---|---|---|
Assessment component |
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| Group Project | 20% | 15 hours | No |
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Group project, 2500 words |
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Reassessment component is the same |
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Assessment component |
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| Centrally-timetabled examination (On-campus) | 80% | 58 hours | No |
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Written Examination
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Reassessment component is the same |
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Feedback on assessment
Written qualitative and quantitative feedback will be given after the final exam and class test Written individual feedback will be given after the group project
Pre-requisites
To take this module, you must have passed:
Courses
This module is Core for:
- Year 1 of TIBS-N3G2 Postgraduate Taught Mathematical Finance