A Constraint Generation Approach to Learning Stable Linear Dynamical Systems
Boots, Byron, Gordon, Geoffrey J., Siddiqi, Sajid M.
–Neural Information Processing Systems
Stability is a desirable characteristic for linear dynamical systems, but it is often ignored by algorithms that learn these systems from data. We propose a novel method for learning stable linear dynamical systems: we formulate an approximation ofthe problem as a convex program, start with a solution to a relaxed version of the program, and incrementally add constraints to improve stability. Rather than continuing to generate constraints until we reach a feasible solution, we test stability at each step; because the convex program is only an approximation of the desired problem, this early stopping rule can yield a higher-quality solution. We apply our algorithm to the task of learning dynamic textures from image sequences as well as to modeling biosurveillance drug-sales data. The constraint generation approach leads to noticeable improvement in the quality of simulated sequences. We compare our method to those of Lacy and Bernstein [1, 2], with positive results in terms of accuracy, quality of simulated sequences, and efficiency.
Neural Information Processing Systems
Dec-31-2008
- Country:
- North America > United States > Pennsylvania > Allegheny County > Pittsburgh (0.15)
- Genre:
- Research Report (0.49)
- Industry:
- Health & Medicine > Public Health (0.46)
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