NeurIPS2024
Faster Differentially Private Top-k Selection: A Joint Exponential Mechanism with Pruning
Hao Wu, Hanwen Zhang
摘要
We study the differentially private top- selection problem, aiming to identify a sequence of items with approximately the highest scores from items. Recent work by Gillenwater et al. (ICML'22) employs a direct sampling approach from the vast collection of possible length- sequences, showing superior empirical accuracy compared to previous pure or approximate differentially private methods. Their algorithm has a time and space complexity of . In this paper, we present an improved algorithm with time and space complexity , where denotes the privacy parameter. Experimental results show that our algorithm runs orders of magnitude faster than their approach, while achieving similar empirical accuracy.