Learning Privately with Labeled and Unlabeled Examples
Amos Beimel, Kobbi Nissim, Uri Stemmer

TL;DR
This paper introduces private semi-supervised learning models where the focus is on minimizing labeled sample complexity, characterized by VC dimension, and presents new constructions that improve efficiency while maintaining privacy.
Contribution
It proposes a novel private semi-supervised learning framework with labeled sample complexity tied to VC dimension and introduces two generic constructions to enhance efficiency.
Findings
Labeled sample complexity is characterized by VC dimension.
First construction achieves labeled complexity proportional to VC dimension.
Second construction reduces labeled complexity while maintaining unlabeled complexity.
Abstract
A private learner is an algorithm that given a sample of labeled individual examples outputs a generalizing hypothesis while preserving the privacy of each individual. In 2008, Kasiviswanathan et al. (FOCS 2008) gave a generic construction of private learners, in which the sample complexity is (generally) higher than what is needed for non-private learners. This gap in the sample complexity was then further studied in several followup papers, showing that (at least in some cases) this gap is unavoidable. Moreover, those papers considered ways to overcome the gap, by relaxing either the privacy or the learning guarantees of the learner. We suggest an alternative approach, inspired by the (non-private) models of semi-supervised learning and active-learning, where the focus is on the sample complexity of labeled examples whereas unlabeled examples are of a significantly lower cost. We…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Machine Learning and Algorithms · Cryptography and Data Security
