20598 - FINANCE WITH BIG DATA
Department of Finance
SILVIO PETRICONI
Suggested background knowledge
Mission & Content Summary
MISSION
CONTENT SUMMARY
Part I: Financial Contracting for Digital Finance
- Blockchain and distributed consensus
- Smart Contracts: Hands-on development with Solidity
- Cryptoasset design: ERC20, ERC721 and ERC777 tokens
- Decentralised Finance (DeFi)
- Central Bank Digital Currency (CBDC)
Part II: Topics in Machine Learning for FinTech
- Payments, Payment Data and PSD2.
- Machine Learning with Imbalanced Data
- Financial Networks and Financial Risk Propagation
-
Strategic Machine Learning in Credit Markets
-
Beyond FinTech: InsurTech, RegTech, SupTech
Intended Learning Outcomes (ILO)
KNOWLEDGE AND UNDERSTANDING
- Summarize the upsides and limitations of permissionless blockchains for financial applications.
- Identify adequate smart contract designs for financial applications.
- Recognize systemic risks of current DeFi platforms, and select adequate mitigation strategies.
- Describe the potential evolution of DeFi with settlement in central bank digital currency.
- Select adequate machine learning strategies for FinTech applications.
- Identify origins of bias in machine learning models for credit screening.
- Understand key technological, strategic and regulatory aspects of new FinTech business models.
APPLYING KNOWLEDGE AND UNDERSTANDING
- Develop financial smart contracts and cryptoassets on a trustless blockchain.
- Formulate statistical models for FinTech and InsurTech applications using advanced machine learning techniques.
- Choose adequate technologies, data sources and machine learning models to support a particular FinTech business idea.
Teaching methods
- Face-to-face lectures
- Online lectures
- Guest speaker's talks (in class or in distance)
- Individual assignments
- Group assignments
- Interactive class activities (role playing, business game, simulation, online forum, instant polls)
DETAILS
This course is designed for a high level of participation and interaction. We'll have online and face-to-face lectures, complemented by hands-on lab classes in which we develop prototypes of what was discussed in the lectures. We will run simulations and let our models compete against each other. Furthermore, there is a semester-long project which gives you plenty of opportunity to develop and demonstrate your own ideas.
Assessment methods
Continuous assessment | Partial exams | General exam | |
---|---|---|---|
|
x | ||
|
x | ||
|
x |
ATTENDING STUDENTS
With the purpose of measuring the acquisition of the above-mentioned learning outcomes, attending students’ assessment is based on three components:
- Short quizzes (25% of the final grade), open and closed questions aimed to assess students’ understanding of the core material of the course. The quizzes are open book and can be taken remotely via Blackboard.
- Individual assignments (4x 10% of the final grade: one individual presentation, one group project proposal, plus two takehome assignments) to test students’ ability to apply the concepts from class in practice.
- A final group project (35% of the final grade) aimed to validate students' ability to work as part of a team, think critically and make valuable contributions that draw on the skills acquired in class.
NOT ATTENDING STUDENTS
For non-attending students (all students who fail to take at least four out of the five quizzes, either in person or remotely), the grade is determined as follows:
- General Exam (50% of the final grade) to verify student's understanding of the material.
- Individual Project (50%) to test students' ability to apply concepts from class.
Teaching materials
ATTENDING AND NOT ATTENDING STUDENTS
The teaching materials comprise of
- lecture slides
- software codes for the labs
- reading assignments
All relevant teaching materials are made available on the course page.