α-leakage by R\'enyi Divergence and Sibson Mutual Information
Abstract
For f(t) = (α-1αt), this paper proposes a f-mean information gain measure. R\'enyi divergence is shown to be the maximum f-mean information gain incurred at each elementary event y of channel output Y and Sibson mutual information is the f-mean of this Y-elementary information gain. Both are proposed as α-leakage measures, indicating the most information an adversary can obtain on sensitive data. It is shown that the existing α-leakage by Arimoto mutual information can be expressed as f-mean measures by a scaled probability. Further, Sibson mutual information is interpreted as the maximum f-mean information gain over all estimation decisions applied to channel output.
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