אירועים
אירועים והרצאות בפקולטה למדעי המחשב ע"ש הנרי ומרילין טאוב
יום שני, 18.12.2017, 10:30
Over the past two decades, machine learning has rapidly evolved and
emerged as a highly influential discipline of computer science and
engineering. One of the pillars of machine learning is mathematical
optimization, and the connection between the two fields has been a
primary focus of research. In this talk, I will present two recent works
that contribute to this study, focusing on online learning---a central
model in machine learning for sequential decision making and learning
under uncertainty. In the first part of the talk, I will describe a
foundational result concerned with the power of optimization in online
learning, and give answer to the question: does there exist a generic
and efficient reduction from online learning to black-box optimization?
In the second part, I will discuss a recent work that employs online
learning techniques to design a new efficient and adaptive
preconditioned algorithm for large-scale optimization. Despite employing
preconditioning, the algorithm is practical even in modern optimization
scenarios such as those arising in training state-of-the-art deep neural
networks. I will present the new algorithm along with its theoretical
guarantees and demonstrate its performance empirically.
Short Bio:
==========
Tomer Koren is a Research Scientist at Google, Mountain View. His
research focuses on machine learning and optimization, with an emphasis
on online and statistical learning, sequential decision making, and
stochastic optimization. Tomer joined Google in 2016 after receiving his
Ph.D. from the Technion---Israel Institute of Technology, under the
guidance of Prof. Elad Hazan. During his doctoral studies, he was also a
research intern with Microsoft Research Herzliya, Microsoft Research
Redmond, and Yahoo Research Labs in Haifa.