Nalini K. Ratha, Jonathan Connell, et al.
IBM J. Res. Dev
In many areas in machine learning, decision trees play a crucial role in classification and regression. When a decision tree based classifier is hosted as a service in a critical application with the need for privacy protection of the service as well as the user data, fully homomorphic encrypted can be employed. However, a decision node in a decision tree can't be directly implemented in FHE. In this paper, we describe an end-to-end approach to support privacyenhanced decision tree classification using IBM supported open-source library HELib. Using several options for building a decision node and employing oblivious computations coupled with an argmax function in FHE we show that a highly secure and trusted decision tree service can be enabled.
Nalini K. Ratha, Jonathan Connell, et al.
IBM J. Res. Dev
Ehud Aharoni, Nir Drucker, et al.
CSCML 2023
Jakob Naucke, Hamish Hunt, et al.
AIChallengeIoT/ACM SenSys 2019
Lior Ben Yamin, Jing Li, et al.
APPROX/RANDOM 2020