20656 - METHODS AND DATA ANALYTICS FOR RISK ASSESSMENT
Department of Decision Sciences
ALON ROSEN
Suggested background knowledge
Mission & Content Summary
MISSION
CONTENT SUMMARY
- Bayesian approach to Probability
- Bayesian Methods in Risk Assessment
- Bayesian Networks and Causal Graphs
- Unsupervised learning in the Bayesian context
- Supervised learning in the Bayesian context
- Case studies: Risk prediction in business, software, hardware, law, medicine, insurance, climate
- Introduction to Monte Carlo Methods
- Monte Carlo Methods for Risk Assessment
- Cryptography: concepts and tools
Intended Learning Outcomes (ILO)
KNOWLEDGE AND UNDERSTANDING
- The Bayesian (and frequentist) view of the world
- Understand the principles and methods of supervised and unsupervised learning in Bayesian terms
- Gain an intuition for the building of a Bayesian data analysis pipeline from data collection to final predictions
- Understand the concept and purpose of Monte Carlo simulations
- Understand basic concepts in modern Cryptography
APPLYING KNOWLEDGE AND UNDERSTANDING
- Formulate a problem in terms of Bayesian methods
- Design and apply a Bayesian data analysis pipeline using large or small datasets
- Read current literature on the application of data analytics to risk assessment in different domains
- Implement Monte Carlo simulations and use them as tools for solving real-world problems
- Define, construct and analyze basic cryptographic primitives and assess their security
Teaching methods
- Face-to-face lectures
- Group assignments
DETAILS
Group assignments: Devloping a risk model in AgenaRisk given a problem description
Assessment methods
Continuous assessment | Partial exams | General exam | |
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ATTENDING AND NOT ATTENDING STUDENTS
The exam consists of a theory part and a group project.
The theory part features open and closed answer questions. It will test the students' understanding of the Bayesian approach to modelling uncertainty, explain concepts and mathematical relations connected to it and use it for estimating numerical quantities in specified problem settings. There will be additional questions intended to test the students' familiarity with basic Monte Carlo methods. The exam is not open-book: any material outside of what are provided by the instructors is forbidden.
The group project will consist in developing a risk model based on provided literature. The students will be provided with the description of a specific scenario and will develop a model to estimate risks involved. The project will test the students ability to understand texts describing risk scenarios, design and apply a Bayesian analysis pipeline based on the text and identify sensible values for the different variables involved. This will also involve the analysis of the reliability of the model and test if the students can spot the weak points of the models they develop.
The group project will give a maximum of 16 points and the theoretical exam will give a maximum of 15 points.
Teaching materials
ATTENDING AND NOT ATTENDING STUDENTS
For the Bayesian part: Fenton, Norman, and Martin Neil. Risk assessment and decision analysis with Bayesian networks. Crc Press, 2012. In this part, we will also use the software "AgenaRisk". Licenses for this software will be provided during the course.
Materials for the part on Monte Carlo methods will be provided during the course.