Proceedings Article10.1109/ITW.2015.7133120
Gaussian estimation under attack uncertainty
Tara Javidi,Yonatan Kaspi,Himanshu Tyagi +2 more
- 01 Apr 2015
pp 1-5
1
TL;DR: This work considers the estimation of a standard Gaussian random variable under an observation attack where an adversary may add a zero mean Gaussian noise with variance in a bounded, closed interval to an otherwise noiseless observation and seeks a minimax estimator for any fixed prior probability of attack.
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Abstract: We consider the estimation of a standard Gaussian random variable under an observation attack where an adversary may add a zero mean Gaussian noise with variance in a bounded, closed interval to an otherwise noiseless observation. A straightforward approach would entail either ignoring the attack and simply using an optimal estimator under normal operation or taking the worst-case attack into account and using a minimax estimator that minimizes the cost under the worst-case attack. In contrast, we seek to characterize the optimal tradeoff between the MSE under normal operation and the MSE under the worst-case attack. Equivalently, we seek a minimax estimator for any fixed prior probability of attack. Our main result shows that a unique minimax estimator exists for every fixed probability of attack and is given by the Bayesian estimator for a least-favorable prior on the set of possible variances. Furthermore, the least-favorable prior is unique and has a finite support. While the minimax estimator is linear when the probability of attack is 0 or 1, our numerical results show that the minimax linear estimator is far from optimal for all other probabilities of attack and a simple nonlinear estimator does much better.
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Citations
A unified minimax result for restricted parameter spaces
TL;DR: In this article, the authors provide a development that unifies, simplifies and extends considerably a number of minimax results in the restricted parameter space literature, such as estimating location or scale parameters under a lower (or upper) bound restriction.
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