Special Track Date: December 10, 2019
Venue: Santa Barbara C, Westin Bonaventure Hotel & Suites, Los Angeles, CA, USA
Introduction
In order to explore how the AI research community can adapt to this new regulatory reality, we organize this special track on Federated Machine Learning (FML). The special track will focus on machine learning and big data analytics techniques with privacy and security. Technical issues include but not limit to data collection, integration, training and modelling, both in the centralized and distributed setting. The special track intends to provide a forum to discuss the open problems and share the most recent and ground-breaking work on the study and application of GDPR compliant machine learning. It will also serve as a venue for networking. Researchers from different communities interested in this problem will have ample time to share thoughts and experience, promoting possible long-term collaborations. Both theoretical and application-based contributions are welcome.
Special Track Program
Time | Activity |
---|---|
16:20 - 16:25 | Opening Remarks by Professor Qiang Yang |
16:25 - 16:40 | Federated Learning with Bayesian Differential Privacy: Aleksei Triastcyn and Boi Faltings |
16:40 - 16:55 | SGNN: A Graph Neural Network Based Federated Learning Approach by Hiding Structure: Guangxu Mei, Ziyu Guo, Shijun Liu, and Li Pan |
16:55 - 17:10 | Measure Contribution of Participants in Federated Learning: Guan Wang, Charlie Xiaoqian Dang, and Ziye Zhou |
17:10 - 17:25 | Profit Allocation for Federated Learning: Tianshu Song, Yongxin Tong, and Shuyue Wei |
17:25 - 17:30 | Tea Break |
17:30 - 17:45 | Secure and Efficient Federated Transfer Learning: Shreya Sharma, Xing Chaoping, Yang Liu, and Yan Kang |
17:45 - 18:00 | Infer Latent Privacy for Attribute Network in Knowledge Graph: Zeyuan Cui, Li Pan, Shijun Liu, and Lizhen Cui |
18:00 - 18:15 | Privacy-preserving Heterogeneous Federated Transfer Learning: Dashan Gao, Yang Liu, Anbu Huang, Ce Ju, Han Yu, and Qiang Yang |
18:15 - 18:30 | Power Demand Response Incentive Pricing Model: Kun Zhang, Yuliang Shi, Yuecan Liu, and Zhongmin Yan |
Scope
We welcome submissions on recent advances in privacy-preserving, secure machine learning and artificial intelligence systems. All accepted papers will be presented during the conference and published in the IEEE BigData 2019 proceedings. At least one author of each accepted paper is expected to register for and attend the conference. Topics include but are not limit to:
Techniques
Please submit a full-length paper (up to 10 page IEEE 2-column format) through the online submission system.
Paper Submission Page:
http://wi-lab.com/cyberchair/2019/bigdata19/scripts/ws_submit.php?subarea=SP
Papers should be formatted according to the IEEE Computer Society Proceedings Manuscript Formatting Guidelines:
https://www.ieee.org/conferences/publishing/templates.html
Co-Chairs
Program Committee
Organized by