Summer Graduate School
Parent Program: | -- |
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Location: | Courant Institute, New York |
Show List of Teaching Assistants
- Alberto Bietti (New York University, Courant Institute)
- Nataly Brukhim (Princeton University)
- Anand Kalvit (Stanford University; Graduate School of Business, Columbia University)
- Sudeep Raja Putta (Columbia University)
Show List of Speakers
- Joan Bruna (New York University, Courant Institute)
- Nicolo Cesa-Bianchi (Universita degli Studi di Milano)
- Nicolas Flammarion (École Polytechnique Fédérale de Lausanne (EPFL))
- Robert Schapire (Microsoft Research)
- Mengdi Wang (Princeton University)
This school is offered in partnership with Istituto Nazionale di Alta Matematica Francesco Severi (INdAM) and the Courant Institute of Mathematical Sciences.
The schedule for the school can be found HERE.
MSRI-supported students will participate from the Courant Institute.
Learning theory is a rich field at the intersection of statistics, probability, computer science, and optimization. Over the last decades the statistical learning approach has been successfully applied to many problems of great interest, such as bioinformatics, computer vision, speech processing, robotics, and information retrieval. These impressive successes relied crucially on the mathematical foundation of statistical learning.
Recently, deep neural networks have demonstrated stunning empirical results across many applications like vision, natural language processing, and reinforcement learning. The field is now booming with new mathematical problems, and in particular, the challenge of providing theoretical foundations for deep learning techniques is still largely open. On the other hand, learning theory already has a rich history, with many beautiful connections to various areas of mathematics (e.g., probability theory, high dimensional geometry, game theory). The purpose of the summer school is to introduce graduate students (and advanced undergraduates) to these foundational results, as well as to expose them to the new and exciting modern challenges that arise in deep learning and reinforcement learning.
To get the most out of the mini-courses in the school, students are encouraged to attend all the lectures and minimize distractions. Please try to avoid the use of laptops, smartphones, tablets, etc. except for note-taking (because the material is highly mathematical, students will probably find it easier to use a pen and notebook).
Suggested Prerequisites:
- Linear Algebra
(e.g. https://ocw.mit.edu/courses/mathematics/18-06-linear-algebra-spring-2010/). - Probability
(e.g. https://ocw.mit.edu/courses/mathematics/18-05-introduction-to-probability-and-statistics-spring-2014/). - Multivariable calculus
(e.g. https://ocw.mit.edu/courses/mathematics/18-02sc-multivariable-calculus-fall-2010/). - Real Analysis
(e.g. https://ocw.mit.edu/courses/mathematics/18-100c-real-analysis-fall-2012/).
For eligibility and how to apply, see the Summer Graduate Schools homepage
Due to the small number of students supported by MSRI, only one student per institution will be funded by MSRI.
Support for this school is provided by Scuola Matematica Interuniversitaria (SMI) and MSRI.
Learning and adaptive systems
Computational learning theory
Decision theory
Probabilistic games
stochastic processes
Neural nets
62M45 - Neural nets and related approaches to inference from stochastic processes
68T05 - Learning and adaptive systems in artificial intelligence [See also 68Q32]
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