eXplainable Machine Learning course for Machine Learning (MSc) studies at the University of Warsaw.
Winter semester 2024/25 @pbiecek @hbaniecki @sobieskibj
Previous year: eXplainableMachineLearning-2024, eXplainableMachineLearning-2023, eXplainableMachineLearning-2022
Plan for the winter semester 2024/2025. MIM_UW classes are on Fridays.
- 2024-10-04 -- Introduction, Slides, Audio, Extra reading: Lipton 2017
- 2024-10-11 -- Fairness, Slides, Extra reading: Fairness and Machine Learning
- 2024-10-18 -- LIME and friends, Slides, Audio, Extra reading: Why Should I Trust You?, LORE
- 2024-10-25 -- Ethics and AI 1/3
- 2024-11-08 -- SHAP and friends
- 2024-11-15 -- PDP and friends
- 2024-11-22 -- Ethics and AI 2/3
- 2024-11-29 -- PROJECT: showcase (in-person presentations)
- 2024-12-06 -- VIP and friends
- 2024-12-13 -- LRP and friends
- 2024-12-20 -- Counterfactual explanations and friends
- 2025-01-10 -- Student presentations of research papers
- 2025-01-17 -- Ethics and AI 3/3
- 2025-01-24 -- PROJECT: final presentation (in-person presentations)
The final grade is based on activity in four areas:
- mandatory: Project (0-36)
- mandatory: Exam (0-30)
- optional: Homeworks (0-24)
- optional: Presentation (0-10)
In total you can get from 0 to 100 points. 51 points are needed to pass this course.
Grades:
- 51-60: (3) dst
- 61-70: (3.5) dst+
- 71-80: (4) db
- 81-90: (4.5) db+
- 91-100: (5) bdb
- Homework 1 - Fairness for 0-4 points. Deadline: 2024-10-18 (graded by PBI)
- Homework 2 - LIME for 0-4 points. Deadline: 2024-11-08 (graded by BSO)
- Homework 3 - SHAP for 0-4 points. Deadline: 2024-11-15 (graded by HBA)
- Homework 4 - PDP for 0-4 points. Deadline: 2024-12-06 (graded by PBI)
- Homework 5 - VIP for 0-4 points. Deadline: 2024-12-13 (graded by BSO)
- Homework 6 - LRP for 0-4 points. Deadline: 2024-12-20 (graded by HBA)
TODO
We recommend to dive deep into the following books and explore their references on a particular topic of interest:
- Explanatory Model Analysis. Explore, Explain and Examine Predictive Models by Przemysław Biecek, Tomasz Burzykowski
- Fairness and Machine Learning: Limitations and Opportunities by Solon Barocas, Moritz Hardt, Arvind Narayanan
- Interpretable Machine Learning. A Guide for Making Black Box Models Explainable by Christoph Molnar