2022
DOI: 10.48550/arxiv.2202.13736
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On the Robustness of CountSketch to Adaptive Inputs

Abstract: CountSketch is a popular dimensionality reduction technique that maps vectors to a lower dimension using randomized linear measurements. The sketch supports recovering 2 -heavy hitters of a vector (entries withWe study the robustness of the sketch in adaptive settings where input vectors may depend on the output from prior inputs. Adaptive settings arise in processes with feedback or with adversarial attacks. We show that the classic estimator is not robust, and can be attacked with a number of queries of the … Show more

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