TP + TG Loose Ends Materials for each class – including a detailed description, suggested readings, and class slides – may be found on the class Canvas page. Some of the later classes may be subject to reordering or rescheduling.
Class | Date | Title | Instructor(s) |
---|---|---|---|
Class 01 | Thu Sep 07 | Course Outline + Statistical Machine Learning | TP + LR |
Class 02 | Tue Sep 12 | Regularized Least Squares | LR |
Class 03 | Thu Sep 14 | Logistic Regression and SGD | LR |
Class 04 | Tue Sep 19 | Implicit Regularization | LR |
Class 05 | Thu Sep 21 | Neural Networks – Introduction | LR |
Class 06 | Tue Sep 26 | Kernels and Feature Maps | LR |
Class 07 | Thu Sep 28 | Kernel Regression | LR |
Class 08 | Tue Oct 03 | Statistical Learning Theory | LR |
Class 09 | Thu Oct 05 | Stability | LR |
Monday 9th October – Indigenous People’s Day, Tuesday 10th October – Student Holiday No Classes | |||
Class 10 | Thu Oct 12 | Deep Learning: Tips and Tricks | AR |
Class 11 | Tue Oct 17 | Deep Learning: Approximation – Universal Approximation | TP |
Class 12 | Thu Oct 19 | Deep Learning: Approximation – Compositional Sparsity | TP |
Class 13 | Tue Oct 24 | Deep Learning: Optimization | TP |
Class 14 | Thu Oct 26 | Deep Learning: Optimization – Neural Collapse | AR |
Class 15 | Tue Oct 31 | Deep Learning: Optimization – SGD Noise+Low Rank | TP+TG |
Class 16 | Thu Nov 02 | Deep Learning: Generalization | TP+TG |
Class 17 | Tue Nov 07 | Deep Learning: Transfer Learning | TG |
Class 18 | Thu Nov 09 | Deep Learning: Trends in Architecture and Transformers | Brian Cheung |
Class 19 | Tue Nov 14 | Deep Learning: Transformers | TP |
Class 20 | Thu Nov 16 | Group Invariance and Equivariance in Vision and Learning | Fabio Anselmi |
Class 21 | Tue Nov 21 | Neural Networks and the Ventral Stream | Thomas Serre + Gabriel Kreiman |
Thursday 23rd November – Thanksgiving | |||
Class 22 | Tue Nov 28 | Fireside on AI, LLMs and OpenAI | Alexander Madry |
Class 23 | Thu Nov 30 | Curses and Blessings of Dimensionality | David Donoho |
Class 24 | Tue Dec 05 | Loose Ends | TP + TG |
Class 25 | Thu Dec 07 | On simple transformers | Alberto Bietti |
Class 26 | Tue Dec 12 | AI and Regulations | Theos Evgeniou |
Reading List
Notes covering the classes will be provided in the form of independent chapters of a book currently in draft format. Additional information will be given through the slides associated with classes (where applicable). The books/papers listed below are useful general reference reading, especially from the theoretical viewpoint. A list of additional suggested readings will also be provided separately for each class.
Book (draft)
- L. Rosasco and T. Poggio, Machine Learning: a Regularization Approach, MIT-9.520 Lectures Notes, Manuscript, Dec. 2017 (provided).
Primary References
- S. Shalev-Shwartz and S. Ben-David. Understanding Machine Learning: From Theory to Algorithms. Cambridge University Press, 2014.
- O. Bousquet, S. Boucheron and G. Lugosi. Introduction to Statistical Learning Theory. Advanced Lectures on Machine Learning, LNCS 3176, pp. 169-207. (Eds.) Bousquet, O., U. von Luxburg and G. Ratsch, Springer, 2004.
- F. Cucker and S. Smale. On The Mathematical Foundations of Learning. Bulletin of the American Mathematical Society, 2002.
- L. Devroye, L. Gyorfi, and G. Lugosi. A Probabilistic Theory of Pattern Recognition. Springer, 1997.
- T. Evgeniou, M. Pontil and T. Poggio. Regularization Networks and Support Vector Machines. Advances in Computational Mathematics, 2000.
- T. Poggio and S. Smale. The Mathematics of Learning: Dealing with Data. Notices of the AMS, 2003.
- V. N. Vapnik. Statistical Learning Theory. Wiley, 1998.
- T. Poggio, H. Mhaskar, L. Rosasco, B. Miranda, and Q. Liao. Why and When can Deep-but not Shallow-Networks Avoid the Curse of Dimensionality: A Review. International Journal of Automation and Computing, 1-17, 2017.
- T. Poggio, A. Banburski, Q. Liao. Theoretical Issues in Deep Networks. PNAS, 1-7, 2020.
- Y. LeCun, Y. Bengio and G. Hinton, Deep Learning, Nature, 436-444, 2015.
Resources and links
- Machine Learning 2017-2018. University of Genoa, graduate ML course.
- L. Rosasco, Introductory Machine Learning Notes, University of Genoa, ML 2016/2017 lectures notes, Oct. 2016.