Differentially Private Covariance Revisited

Abstract
In this paper, we present two new algorithms for covariance estimation under concentrated differential privacy (zCDP). The first algorithm achieves a Frobenius error of , where is the trace of the covariance matrix. By taking , this also implies a worst-case error bound of , which improves the standard Gaussian mechanism's for the regime . Our second algorithm offers a tail-sensitive bound that could be much better on skewed data. The corresponding algorithms are also simple and efficient. Experimental results show that they offer significant improvements over prior work.
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