Privacy-preserving machine learning / Jin Li, Ping Li, Zheli Liu, Xiaofeng Chen, Tong Li
Material type: TextSeries: Publisher: Singapore : Springer, 2022Description: viii, 88 pages illustrationsISBN: 9789811691386; 9789811691386Subject(s): Machine learningDDC classification: Q325.5 .P56 2022 Online resources: Click here to access online | Click here to access online | Click here to access onlineItem type | Current library | Call number | Status | Date due | Barcode |
---|---|---|---|---|---|
Books | Gabriel Afolabi Ojo Central Library (Headquarters). | Q325.5 .P56 2022 (Browse shelf(Opens below)) | Available | 0194798 | |
Books | Gabriel Afolabi Ojo Central Library (Headquarters). | Q325.5 .P56 2022 (Browse shelf(Opens below)) | Available | 0194797 | |
Books | Gabriel Afolabi Ojo Central Library (Headquarters). | Q325.5 .P56 2022 (Browse shelf(Opens below)) | Available | 0195340 |
Introduction -- Secure Cooperative Learning in Early Years -- Outsourced Computation for Learning -- Secure Distributed Learning -- Learning with Differential Privacy -- Applications - Privacy-Preserving Image Processing -- Threats in Open Environment -- Conclusion
This book provides a thorough overview of the evolution of privacy-preserving machine learning schemes over the last ten years, after discussing the importance of privacy-preserving techniques. In response to the diversity of Internet services, data services based on machine learning are now available for various applications, including risk assessment and image recognition. In light of open access to datasets and not fully trusted environments, machine learning-based applications face enormous security and privacy risks. In turn, it presents studies conducted to address privacy issues and a series of proposed solutions for ensuring privacy protection in machine learning tasks involving multiple parties. In closing, the book reviews state-of-the-art privacy-preserving techniques and examines the security threats they face
There are no comments on this title.