Differential privacy (DP) has become the de facto standard of privacy preservation due to its strong protection and sound mathematical foundation, which is widely adopted in different applications such as big data analysis, graph data process, machine learning, deep learning, and federated learning. Although DP has become an active and influential area, it is not the best remedy for all privacy problems in different scenarios. Moreover, there are also some misunderstanding, misuse, and great challenges of DP in specific applications. In this paper, we point out a series of limits and open challenges of corresponding research areas. Besides, we offer potentially new insights and avenues on combining differential privacy with other effective dimension reduction techniques and secure multiparty computing to clearly define various privacy models.
翻译:不同隐私(DP)因其强有力的保护和健全的数学基础而已成为保护隐私的实际标准,这种保护被广泛用于诸如大数据分析、图表数据进程、机器学习、深层学习和联合学习等不同应用中。虽然DP已经成为一个积极和有影响力的领域,但它并不是解决不同情况下所有隐私问题的最佳办法。此外,在具体应用中,DP也存在一些误解、滥用和巨大挑战。我们在本文件中指出了相应的研究领域的一系列限制和公开挑战。此外,我们提供了将差异隐私与其他有效减少层面的技术相结合以及确保多功能计算以明确界定各种隐私模式的潜在新见解和途径。