Monday, December 4, 2023 - 4:00pm
Event Calendar Category
LIDS Seminar Series
Speaker Name
Ankur Moitra
Affiliation
MIT
Building and Room Number
32-155
Linear dynamical systems are the canonical model for time series data. They have wide-ranging applications and there is a vast literature on learning their parameters from input-output sequences. Moreover they have received renewed interest because of their connections to recurrent neural networks. But there are wide gaps in our understanding. Existing works have only asymptotic guarantees or else make restrictive assumptions, e.g. that preclude having any long-range correlations. In this work, we give a new algorithm based on the method of moments that is computationally efficient and works under essentially minimal assumptions. Our work points to several missed connections, whereby tools from theoretical machine learning including tensor methods, can be used in non-stationary settings.
Ankur Moitra is the Norbert Wiener Professor of Mathematics at MIT and the Director of the Statistics and Data Science Center. The aim of his work is to bridge the gap between theoretical computer science and machine learning by developing algorithms with provable guarantees and foundations for reasoning about their behavior.