Data-driven Optimal Filtering for Linear Systems with Unknown Noise Covariances
–Neural Information Processing Systems
This paper examines learning the optimal filtering policy, known as the Kalman gain, for a linear system with unknown noise covariance matrices using noisy output data. The learning problem is formulated as a stochastic policy optimization problem, aiming to minimize the output prediction error. This formulation provides a direct bridge between data-driven optimal control and, its dual, optimal filtering.
Neural Information Processing Systems
Feb-17-2026, 11:36:05 GMT
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