Talks
Spring 2017

Gradient Descent Learns Linear Dynamical Systems

Tuesday, May 2nd, 2017, 2:00 pm2:45 pm

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We prove that gradient descent efficiently converges to the global optimizer of the maximum likelihood objective of an unknown linear time-invariant dynamical system from a sequence of noisy observations generated by the system. Even though objective function is non-convex, we provide polynomial running time and sample complexity bounds under strong but natural assumptions. Linear systems identification has been studied for many decades, yet, to the best of our knowledge, these are the first polynomial guarantees for the problem we consider.
 
Joint work with Tengyu Ma and Ben Recht.