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  4. Wasserstein Distributionally Robust Kalman Filtering
 
conference paper

Wasserstein Distributionally Robust Kalman Filtering

Shafieezadeh Abadeh, Soroosh  
•
Nguyen, Viet Anh  
•
Kuhn, Daniel  
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2018
NIPS Proceedings
Neural Information Processing Systems

We study a distributionally robust mean square error estimation problem over a nonconvex Wasserstein ambiguity set containing only normal distributions. We show that the optimal estimator and the least favorable distribution form a Nash equilibrium. Despite the non-convex nature of the ambiguity set, we prove that the estimation problem is equivalent to a tractable convex program. We further devise a Frank-Wolfe algorithm for this convex program whose direction-searching subproblem can be solved in a quasi-closed form. Using these ingredients, we introduce a distributionally robust Kalman filter that hedges against model risk.

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