MA435      Half Unit
Machine Learning in Financial Mathematics

This information is for the 2023/24 session.

Teacher responsible

Prof Mihail Zervos COL 4.02

Availability

This course is available on the MSc in Applicable Mathematics, MSc in Financial Mathematics, MSc in Quantitative Methods for Risk Management, MSc in Statistics (Financial Statistics) and MSc in Statistics (Financial Statistics) (Research). This course is not available as an outside option.

Pre-requisites

Students must have completed Stochastic Processes (ST409).

Students are expected to have done ST409; students who haven't done ST409 need to obtain permission from the lecturer by providing a statement explaining why and how they know the material covered in ST409. Students are also expected to have a good command of linear algebra and calculus.

Course content

This course introduces a range of computational problems in financial markets and illustrates how they can be addressed by using tools from machine learning. In particular, portfolio optimisation, optimal trade execution, pricing and hedging of financial derivatives and calibration of stochastic volatility models are included. The course considers some theoretical results on machine learning basics such as empirical risk minimisation, bias-complexity tradeoff, model selection and validation as well as more advanced topics such as deep learning, feedforward neural networks, universal approximation theorems, stochastic gradient descent, back propagation, regularisation and different neural network architectures. 

Teaching

20 hours of lectures and 10 hours of seminars in the WT.

This course is delivered through a combination of seminars and lectures totalling to 30 hours across WT. 

Formative coursework

The main formative assessment will be in the form of weekly exercise sets, which will be discussed in the seminars. Some of the topics of these will be similar to what is expected in the summative assessment (exam).

Indicative reading

  • M. Dixon, I. Halperin and P. Bilokon. Machine Learning in Finance. Springer, 2020.
  • H. Ni, G. Yu, J. Zheng and X. Dong, An Introduction to Machine Learning and Quantitative Finance. World Scientific, 2021.
  • C.M. Bishop, Pattern Recognition and Machine Learning. Springer, 2006.
  • S. Shalev-Shwartz and S. Ben-David, Understanding Machine Learning. Cambridge University Press, 2014.
  • I. Goodfellow, Y. Bengio and A. Courville, Deep Learning. MIT Press, 2016.
  • J. M. Hutchinson, A. Lo and T. Poggio, A Nonparametric Approach to Pricing and Hedging Derivatives Securities Via Learning Networks. Journal of Finance , 1994.
  • H. Buehler, L. Gonon, J. Teichmann and B. Wood, Deep Hedging. Quantitative Finance, 2019.
  • J. Ruf and W. Wang, Hedging with Linear Regressions and Neural Networks. To appear in Journal of Business & Economics Statistics, 2021.
  • A. Hernandez, Model Calibration with Neural Networks. Risk, 2017.
  • B. Horvath, A. Muruguza and M. Tomas, Deep Learning Volatility: a Deep Learning Network Perspective on Pricing and Calibration in (Rough) Volatility Models. Quantitative Finance, 2021.

Assessment

Exam (100%, duration: 2 hours) in the spring exam period.

Key facts

Department: Mathematics

Total students 2022/23: 25

Average class size 2022/23: 25

Controlled access 2022/23: Yes

Value: Half Unit

Guidelines for interpreting course guide information

Course selection videos

Some departments have produced short videos to introduce their courses. Please refer to the course selection videos index page for further information.

Personal development skills

  • Self-management
  • Problem solving
  • Application of information skills
  • Communication
  • Application of numeracy skills
  • Specialist skills