Regret-Optimal Filtering for Prediction and Estimation
Oron Sabag, Babak Hassibi

TL;DR
This paper introduces regret-optimal filters that outperform traditional Kalman and $H_ abla$ filters by balancing average and worst-case errors, providing a new approach for robust signal estimation across various noise conditions.
Contribution
The paper proposes a novel regret minimization framework for filter design, explicitly constructing regret-optimal filters for time-invariant state-space models, bridging the gap between $H_2$ and $H_ abla$ filters.
Findings
Regret-optimal filters interpolate between $H_2$ and $H_ abla$ filter performances.
Explicit constructions for regret filters in time-invariant models are provided.
Numerical simulations confirm the effectiveness of regret minimization in diverse noise regimes.
Abstract
The filtering problem of causally estimating a desired signal from a related observation signal is investigated through the lens of regret optimization. Classical filter designs, such as (Kalman) and , minimize the average and worst-case estimation errors, respectively. As a result filters are sensitive to inaccuracies in the underlying statistical model, and filters are overly conservative since they safeguard against the worst-case scenario. We propose instead to minimize the \emph{regret} in order to design filters that perform well in different noise regimes by comparing their performance with that of a clairvoyant filter. More explicitly, we minimize the largest deviation of the squared estimation error of a causal filter from that of a non-causal filter that has access to future observations. In this sense, the…
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Taxonomy
TopicsDistributed Sensor Networks and Detection Algorithms · Target Tracking and Data Fusion in Sensor Networks
