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Privacy-preserving deep learning = a...
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Kim, Kwangjo.
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Privacy-preserving deep learning = a comprehensive survey /
紀錄類型:
書目-電子資源 : Monograph/item
正題名/作者:
Privacy-preserving deep learning/ by Kwangjo Kim, Harry Chandra Tanuwidjaja.
其他題名:
a comprehensive survey /
作者:
Kim, Kwangjo.
其他作者:
Tanuwidjaja, Harry Chandra.
出版者:
Singapore :Springer Singapore : : 2021.,
面頁冊數:
xiv, 74 p. :ill., digital ;24 cm.
內容註:
Introduction -- Definition and Classification -- Background Knowledge -- X-based Hybrid PPDL -- The Gap Between Theory and Application of X-based PPDL -- Federated Learning and Split Learning-based PPDL -- Analysis and Performance Comparison -- Attacks on DL and PPDL as the Possible Solutions -- Challenges and Future Work.
Contained By:
Springer Nature eBook
標題:
Machine learning - Security measures. -
電子資源:
https://doi.org/10.1007/978-981-16-3764-3
ISBN:
9789811637643
Privacy-preserving deep learning = a comprehensive survey /
Kim, Kwangjo.
Privacy-preserving deep learning
a comprehensive survey /[electronic resource] :by Kwangjo Kim, Harry Chandra Tanuwidjaja. - Singapore :Springer Singapore :2021. - xiv, 74 p. :ill., digital ;24 cm. - SpringerBriefs on cyber security systems and networks,2522-5561. - SpringerBriefs on cyber security systems and networks..
Introduction -- Definition and Classification -- Background Knowledge -- X-based Hybrid PPDL -- The Gap Between Theory and Application of X-based PPDL -- Federated Learning and Split Learning-based PPDL -- Analysis and Performance Comparison -- Attacks on DL and PPDL as the Possible Solutions -- Challenges and Future Work.
This book discusses the state-of-the-art in privacy-preserving deep learning (PPDL), especially as a tool for machine learning as a service (MLaaS), which serves as an enabling technology by combining classical privacy-preserving and cryptographic protocols with deep learning. Google and Microsoft announced a major investment in PPDL in early 2019. This was followed by Google's infamous announcement of "Private Join and Compute," an open source PPDL tools based on secure multi-party computation (secure MPC) and homomorphic encryption (HE) in June of that year. One of the challenging issues concerning PPDL is selecting its practical applicability despite the gap between the theory and practice. In order to solve this problem, it has recently been proposed that in addition to classical privacy-preserving methods (HE, secure MPC, differential privacy, secure enclaves), new federated or split learning for PPDL should also be applied. This concept involves building a cloud framework that enables collaborative learning while keeping training data on client devices. This successfully preserves privacy and while allowing the framework to be implemented in the real world. This book provides fundamental insights into privacy-preserving and deep learning, offering a comprehensive overview of the state-of-the-art in PPDL methods. It discusses practical issues, and leveraging federated or split-learning-based PPDL. Covering the fundamental theory of PPDL, the pros and cons of current PPDL methods, and addressing the gap between theory and practice in the most recent approaches, it is a valuable reference resource for a general audience, undergraduate and graduate students, as well as practitioners interested learning about PPDL from the scratch, and researchers wanting to explore PPDL for their applications.
ISBN: 9789811637643
Standard No.: 10.1007/978-981-16-3764-3doiSubjects--Topical Terms:
3500846
Machine learning
--Security measures.
LC Class. No.: Q325.5 / .K55 2021
Dewey Class. No.: 006.31
Privacy-preserving deep learning = a comprehensive survey /
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Introduction -- Definition and Classification -- Background Knowledge -- X-based Hybrid PPDL -- The Gap Between Theory and Application of X-based PPDL -- Federated Learning and Split Learning-based PPDL -- Analysis and Performance Comparison -- Attacks on DL and PPDL as the Possible Solutions -- Challenges and Future Work.
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This book discusses the state-of-the-art in privacy-preserving deep learning (PPDL), especially as a tool for machine learning as a service (MLaaS), which serves as an enabling technology by combining classical privacy-preserving and cryptographic protocols with deep learning. Google and Microsoft announced a major investment in PPDL in early 2019. This was followed by Google's infamous announcement of "Private Join and Compute," an open source PPDL tools based on secure multi-party computation (secure MPC) and homomorphic encryption (HE) in June of that year. One of the challenging issues concerning PPDL is selecting its practical applicability despite the gap between the theory and practice. In order to solve this problem, it has recently been proposed that in addition to classical privacy-preserving methods (HE, secure MPC, differential privacy, secure enclaves), new federated or split learning for PPDL should also be applied. This concept involves building a cloud framework that enables collaborative learning while keeping training data on client devices. This successfully preserves privacy and while allowing the framework to be implemented in the real world. This book provides fundamental insights into privacy-preserving and deep learning, offering a comprehensive overview of the state-of-the-art in PPDL methods. It discusses practical issues, and leveraging federated or split-learning-based PPDL. Covering the fundamental theory of PPDL, the pros and cons of current PPDL methods, and addressing the gap between theory and practice in the most recent approaches, it is a valuable reference resource for a general audience, undergraduate and graduate students, as well as practitioners interested learning about PPDL from the scratch, and researchers wanting to explore PPDL for their applications.
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