We present a private learner for halfspaces over an arbitrary finite domain with sample complexity . The building block for this learner is a differentially private algorithm for locating an approximate center point of points -- a high dimensional generalization of the median function. Our construction establishes a relationship between these two problems that is reminiscent of the relation between the median and learning one-dimensional thresholds [Bun et al.\ FOCS '15]. This relationship suggests that the problem of privately locating a center point may have further applications in the design of differentially private algorithms. We also provide a lower bound on the sample complexity for privately finding a point in the convex hull. For approximate differential privacy, we show a lower bound of , whereas for pure differential privacy .
View on arXiv