Statistical learning theory
The intermediate exam will happen on Tuesday Okt. 31 for exercises and the colloquium (for theory questions) will be in smaller groups around this date.
Homework module 1 (1 okt: corrected a typo in question 2b.) The deadline for submission is Sunday 15th of Oktober (3 day extension upon request). Submit either by email, in paper during the lecture, or place it under the door of office 620.
Additional clarifications based on questions of the students. Defenses of the homework will happen from 16th of Okt. till 20 Okt. Check your hse email to reserve a time slot for this.
|Date||Summary||Lecture notes||Problem list|
|5 sept||PAC-learning and VC-dimension: definitions||1st and 2nd lecture Updated on 13th of Sept.||Problem list 1|
|12 sept||PAC-learning and VC-dimension: proof of fundamental theorem||Problem list 2|
|19 sept||Sauer's lemma, neural networks and agnostic PAC-learning||3th lecture Updated on the 23th of Sept.||Problem list 3|
|26 sept||Measure concentration, agnostic PAC-learning and Computational learning theory||4th lecture||Problem list 4|
|3 okt||Boosting: the adaBoost algorithm||5th lecture (part about agnostic learning) About boosting: see chapt 6 in the book of Mohri (see below)||Problem list 5|
|10 okt||Boosting: several other algorithms|
|17 okt||Online learning algorithms|
A gentle introduction to the materials of the first 3 lectures and an overview of probability theory, can be found in chapters 1-6 and 11-12 of the following book: Sanjeev Kulkarni and Gilbert Harman: An Elementary Introduction to Statistical Learning Theory, 2012.
Foundations of machine learning, Mehryar Mohri, Afshin Rostamizadeh, and Ameet Talwalker, 2012. These books can downloaded from http://gen.lib.rus.ec/ .
||Bruno Bauwens||15:05–18:00||15:05–18:00||Room 620|