Principled Evaluation of Differentially Private Algorithms Using DPBench
Title | Principled Evaluation of Differentially Private Algorithms Using DPBench |
Publication Type | Conference Paper |
Year of Publication | 2016 |
Authors | Hay, Michael, Machanavajjhala, Ashwin, Miklau, Gerome, Chen, Yan, Zhang, Dan |
Conference Name | Proceedings of the 2016 International Conference on Management of Data |
Date Published | June 2016 |
Publisher | ACM |
Conference Location | New York, NY, USA |
ISBN Number | 978-1-4503-3531-7 |
Keywords | algorithm evaluation, composability, Differential privacy, Human Behavior, privacy, pubcrawl, Resiliency, Scalability |
Abstract | Differential privacy has become the dominant standard in the research community for strong privacy protection. There has been a flood of research into query answering algorithms that meet this standard. Algorithms are becoming increasingly complex, and in particular, the performance of many emerging algorithms is data dependent, meaning the distribution of the noise added to query answers may change depending on the input data. Theoretical analysis typically only considers the worst case, making empirical study of average case performance increasingly important. In this paper we propose a set of evaluation principles which we argue are essential for sound evaluation. Based on these principles we propose DPBench, a novel evaluation framework for standardized evaluation of privacy algorithms. We then apply our benchmark to evaluate algorithms for answering 1- and 2-dimensional range queries. The result is a thorough empirical study of 15 published algorithms on a total of 27 datasets that offers new insights into algorithm behavior--in particular the influence of dataset scale and shape--and a more complete characterization of the state of the art. Our methodology is able to resolve inconsistencies in prior empirical studies and place algorithm performance in context through comparison to simple baselines. Finally, we pose open research questions which we hope will guide future algorithm design. |
URL | https://dl.acm.org/doi/10.1145/2882903.2882931 |
DOI | 10.1145/2882903.2882931 |
Citation Key | hay_principled_2016 |