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5月27日 Tianhao Wang:Synthetic Data Generation with Differential Privacy
2024-05-27 16:00:00
活動(dòng)主題:Synthetic Data Generation with Differential Privacy
主講人:Tianhao Wang
開(kāi)始時(shí)間:2024-05-27 16:00:00
舉行地點(diǎn):閔行校區(qū) 信息樓133會(huì)議室
主辦單位:通信與電子工程學(xué)院

報(bào)告人簡(jiǎn)介:Tianhao Wang is an assistant professor of computer science at the University of Virginia. His research interests lie in data privacy and security, and their connections to machine learning and cryptography. He obtained his Ph.D. from Purdue University in 2021 and held a postdoc position at Carnegie Mellon University. His work about differentially private synthetic data generation won multiple awards in the NIST competitions.

報(bào)告內(nèi)容介紹:Synthetic data generation serves as a powerful tool for sharing and analyzing data while preserving the privacy of individuals. In this talk, we will explore the cutting-edge techniques in synthetic data generation with a focus on maintaining differential privacy. Our discussion will be divided into two main parts. The first part introduces PRIVIMAGE for private image generation. PRIVIMAGE uses a semantic query function to select pre-training data, enhancing training stability and conserving computational resources. The second part introduces GlucoSynth for private time-series data (glucose trace) generation. The core idea of GlucoSynth is to effectively maintain relationships among glucose events and temporal dynamics.