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Fall 2020 IDS2 seminar

Event Type
Seminar/Symposium
Sponsor
Professor Sanmi Koyejo, Department of Computer Science
Date
Oct 30, 2020   2:00 - 3:00 pm  
Speaker
Maryam Fazel is the Moorthy Family Professor of Electrical and Computer Engineering at the University of Washington, with adjunct appointments in Computer Science and Engineering, Mathematics, and Statistics
Cost
Free
Registration
Registration
Contact
Peggy Wells
E-Mail
pwells@illinois.edu
Views
8

Zoom: 272 292 042 ; password: 035679

Meeting Link: https://illinois.zoom.us/j/272292042?pwd=WEFqNHpBekR6RVF1U1NFQkFyMm1CUT09

Title: Learning Linear Dynamical Systems: Improved Rates and the Role of Regularization

Abstract: We consider the problem of learning linear dynamical systems from input-output data, or system identification, given limited output samples. Learning the system dynamics is often the basis of associated control or policy decision problems in tasks varying from linear-quadratic control to deep reinforcement learning. Recent literature has provided finite-sample statistical analysis for simple least-squares regression models applied to this problem. When a low-order model is desired, adding a Hankel nuclear norm regularization term to the least squares problem has been helpful in practice (e.g., simplifies model selection, is less sensitive to hyperparameter tuning).  In this talk, we discuss a new theoretical analysis and insights for the regularized scheme.

Bio:  Maryam Fazel is the Moorthy Family Professor of Electrical and Computer Engineering at the University of Washington, with adjunct appointments in Computer Science and Engineering, Mathematics, and Statistics. Maryam received her MS and PhD from Stanford University, her BS from Sharif University of Technology in Iran, and was a postdoctoral scholar at Caltech before joining UW. She is a recipient of the NSF Career Award, UWEE Outstanding Teaching Award, and a UAI conference Best Student Paper Award with her student. She directs the Institute for Foundations of Data Science (IFDS), a multi-site, collaborative NSF TRIPODS Institute. She is an associate editor of the SIAM journal on Optimization and the SIAM journal on Mathematics of Data Science, and her current research interests are in the area of optimization in machine learning and control.

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