In this seminar, we will discuss private federated learning. We will firstly provide new optimization error bounds for differential private federated learning with Laplacian Smoothing (DP-Fed-LS) and heterogeneous data. The error bounds help us better understand the influence of errors introduced by differential privacy, heterogeneity of data and variance of stochastic gradient descent over the convergence of DP-Fed-LS. For another, we will also explore how to push the limit of private federated learning by improving current gradient attack. Experiment shows that our proposed new attack can recover training data with high quality while the targeted model is untrained and when the batch size is small. Attacks on more realistic settings are to be discussed.

4月29日
10:15am - 11:15am
地點
https://hkust.zoom.us/j/99997376210 (Passcode: 214192)
講者/表演者
Mr. Zhicong LIANG
主辦單位
Department of Mathematics
聯絡方法
付款詳情
對象
Alumni, Faculty and staff, PG students, UG students
語言
英語
其他活動
1月20日
研討會, 演講, 講座
IAS / School of Science Joint Lecture - A Journey to Defect Science and Engineering
Abstract A defect in a material is one of the most important concerns when it comes to modifying and tuning the properties and phenomena of materials. The speaker will review his study of defec...
1月6日
研討會, 演講, 講座
IAS / School of Science Joint Lecture - Innovations in Organo Rare-Earth and Titanium Chemistry: From Self-Healing Polymers to N2 Activation
Abstract In this lecture, the speaker will introduce their recent studies on the development of innovative organometallic complexes and catalysts aimed at realizing unprecedented chemical trans...