SecureML: A System for Scalable Privacy-Preserving Machine Learning
Visa (United Kingdom) · University of Maryland, College Park
Abstract
Machine learning is widely used in practice to produce predictive models for applications such as image processing, speech and text recognition. These models are more accurate when trained on large amount of data collected from different sources. However, the massive data collection raises privacy concerns. In this paper, we present new and efficient protocols for privacy preserving machine learning for linear regression, logistic regression and neural network training using the stochastic gradient descent method. Our protocols fall in the two-server model where data owners distribute their private data among two non-colluding servers who train various models on the joint data using secure two-party…
Citation impact
- FWCI
- 109.46
- Percentile
- 100%
- References
- 49
Authors
2Topics & keywords
- Computer science
- Softmax function
- Scalability
- Server
- Machine learning
- Artificial neural network
- Information privacy
- Artificial intelligence