Decentralized cross-node learning for audience propensity prediction
Assignee
Microsoft Technology Licensing, LLC
Inventors
Boyi Chen, Tong Zhou, Siyao Sun, Lijun Peng, Xinruo Jing, Vakwadi Thejaswini Holla, Yi Wu, Pankhuri Goyal, Souvik Ghosh, Zheng Li, Yi Zhang, Onkar A. Dalal, Jing Wang, Aarthi Jayaram
Abstract
Embodiments of the disclosed technologies receive a first-party trained model and a first-party data set from a first-party system into a protected environment, receive a first third-party data set into the protected environment, and, in a data clean room, joining the first-party data set and the first third-party data set to create a joint data set for the particular segment, tuning a first-party trained model with the joint data set to create a third-party tuned model, sending model parameter data learned in the data clean room as a result of the tuning to an aggregator node, receiving a globally tuned version of the first-party trained model from the aggregator node, applying the globally tuned version of the first-party trained model to a second third-party data set to produce a scored third-party data set, and providing the scored third-party data set to a content distribution service of the first-party system.
CPC Classifications
Filing Date
2022-05-02
Application No.
17735020
Claims
20