Special Issue on Statistical and Learning-Theoretic Challenges in Data Privacy
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Abstract
This special issue presents papers based on talks from a workshop on "Statistical and Learning-Theoretic Challenges in Data Privacy" held at UCLA's Institute for Pure and Applied Mathematics (IPAM), February 22–26, 2010.
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