Differentially private synthetic data provide a powerful mechanism to enable data analysis while protecting sensitive information about individuals. We first present a highly effective algorithmic approach for generating differentially private synthetic data in a bounded metric space with near-optimal utility guarantees under the Wasserstein distance. When the data lie in a high-dimensional space, the accuracy of the synthetic data suffers from the curse of dimensionality. We then propose an algorithm to generate low-dimensional private synthetic data efficiently from a high-dimensional dataset. A key step in our algorithm is a private principal component analysis (PCA) procedure with a near-optimal accuracy bound. Based on joint work with Yiyun He (UC Irvine), Roman Vershynin (UC Irvine), and Thomas Strohmer (UC Davis).

8月9日
10:00am - 11:00am
地点
Room 4504 (Lifts 25/26)
讲者/表演者
Prof. Yizhe ZHU
University of California, Irvine
主办单位
Department of Mathematics
联系方法
付款详情
对象
Alumni, Faculty and staff, PG students, UG students
语言
英语
其他活动
12月5日
研讨会, 演讲, 讲座
IAS / School of Science Joint Lecture - Human B Cell Receptor-Epitope Selection for Pan-Sarbecovirus Neutralization
Abstract The induction of broadly neutralizing antibodies (bnAbs) against viruses requires the specific activation of human B cell receptors (BCRs) by viral epitopes. Following BCR activation, ...
10月10日
研讨会, 演讲, 讲座
IAS / School of Science Joint Lecture - Use of Large Animal Models to Investigate Brain Diseases
Abstract Genetically modified animal models have been extensively used to investigate the pathogenesis of age-dependent neurodegenerative diseases, such as Alzheimer (AD), Parkinson (PD), Hunti...