Sept. 5, 2022, 1:12 a.m. | Razane Tajeddine, Joonas Jälkö, Samuel Kaski, Antti Honkela

cs.LG updates on arXiv.org arxiv.org

In this work, we introduce a differentially private method for generating
synthetic data from vertically partitioned data, \emph{i.e.}, where data of the
same individuals is distributed across multiple data holders or parties. We
present a differentially privacy stochastic gradient descent (DP-SGD) algorithm
to train a mixture model over such partitioned data using variational
inference. We modify a secure multiparty computation (MPC) framework to combine
MPC with differential privacy (DP), in order to use differentially private MPC
effectively to learn a …

arxiv data data sharing privacy

Senior Machine Learning Engineer

@ GPTZero | Toronto, Canada

ML/AI Engineer / NLP Expert - Custom LLM Development (x/f/m)

@ HelloBetter | Remote

Doctoral Researcher (m/f/div) in Automated Processing of Bioimages

@ Leibniz Institute for Natural Product Research and Infection Biology (Leibniz-HKI) | Jena

Seeking Developers and Engineers for AI T-Shirt Generator Project

@ Chevon Hicks | Remote

Senior Data Scientist

@ Highmark Health | PA, Working at Home - Pennsylvania

Principal Data Scientist

@ Warner Bros. Discovery | CA San Francisco 153 Kearny Street