Course Identification

Seminar on Deep Learning Theory
20214052

Lecturers and Teaching Assistants

Prof. Ohad Shamir
N/A

Course Schedule and Location

2021
Second Semester
Thursday, 09:15 - 11:00
25/03/2021
31/08/2021

Field of Study, Course Type and Credit Points

Mathematics and Computer Science: Seminar; Elective; Regular; 2.00 points
Life Sciences: Seminar; Elective; Regular; 2.00 points
Life Sciences (Brain Sciences: Systems, Computational and Cognitive Neuroscience Track): Seminar; Elective; Regular; 2.00 points

Comments

N/A

Prerequisites

No

Restrictions

30

Language of Instruction

English

Registration by

07/03/2021

Attendance and participation

Required in at least 80% of the lectures

Grade Type

Pass / Fail

Grade Breakdown (in %)

20%
80%

Evaluation Type

Seminar

Scheduled date 1

N/A
N/A
-
N/A

Estimated Weekly Independent Workload (in hours)

3

Syllabus

In this seminar, students will read, present and discuss recent research papers on the theory of deep learning. The focus will be on rigorous results, pertaining to questions such as why neural networks are successfully trained with simple gradient based methods; why large-scale neural networks are able to generalize well; and how does the network's architecture affects the types of predictors it can express. Students will be able to choose a paper from a predefined list, or present a paper of their own choice (in coordination with the lecturer). 

Learning Outcomes

Upon succesful completion of this course:

The students will gain familiarity with the current state-of-the-art in deep learning theory.

Reading List

N/A

Website

N/A