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Cross-device federated recommendation = privacy-preserving personalization /
紀錄類型:
書目-語言資料,印刷品 : Monograph/item
正題名/作者:
Cross-device federated recommendation/ by Xiangjie Kong ... [et al.].
其他題名:
privacy-preserving personalization /
其他作者:
Kong, Xiangjie.
出版者:
Singapore :Springer Nature Singapore : : 2025.,
面頁冊數:
xiii, 157 p. :ill. (chiefly color), digital ; : 24 cm.;
Contained By:
Springer Nature eBook
標題:
Federated learning (Machine learning) -
電子資源:
https://doi.org/10.1007/978-981-96-3212-1
ISBN:
9789819632121
Cross-device federated recommendation = privacy-preserving personalization /
Cross-device federated recommendation
privacy-preserving personalization /[electronic resource] :by Xiangjie Kong ... [et al.]. - Singapore :Springer Nature Singapore :2025. - xiii, 157 p. :ill. (chiefly color), digital ;24 cm. - Machine learning: foundations, methodologies, and applications,2730-9916. - Machine learning: foundations, methodologies, and applications..
Chapter 1. Introduction -- Chapter 2. Learning Paradigms in Cross-device Federated Recommendation -- Chapter 3. Privacy Computing in Cross-device Federated Recommendation -- Chapter 4. Federated Issues in Cross-device Federated Recommendation -- Chapter 5. Future Prospects.
This book introduces the prevailing domains of recommender systems and cross-device federated learning, highlighting the latest research progress and prospects regarding cross-device federated recommendation. As a privacy-oriented distributed computing paradigm, cross-device federated learning enables collaborative intelligence across multiple devices while ensuring the security of local data. In this context, ubiquitous recommendation services emerge as a crucial application of device-side AI, making a deep exploration of federated recommendation systems highly significant. This book is self-contained, and each chapter can be comprehended independently. Overall, the book organizes existing efforts in federated recommendation from three different perspectives. The perspective of learning paradigms includes statistical machine learning, deep learning, reinforcement learning, and meta learning, where each has detailed techniques (e.g., different neural building blocks) to present relevant studies. The perspective of privacy computing covers homomorphic encryption, differential privacy, secure multi-party computing, and malicious attacks. More specific encryption and obfuscation techniques, such as randomized response and secret sharing, are involved. The perspective of federated issues discusses communication optimization and fairness perception, which are widely concerned in the cross-device distributed environment. In the end, potential issues and promising directions for future research are identified point by point. This book is especially suitable for researchers working on the application of recommendation algorithms to the privacy-preserving federated scenario. The target audience includes graduate students, academic researchers, and industrial practitioners who specialize in recommender systems, distributed machine learning, information retrieval, information security, or artificial intelligence.
ISBN: 9789819632121
Standard No.: 10.1007/978-981-96-3212-1doiSubjects--Topical Terms:
1487729
Federated learning (Machine learning)
LC Class. No.: Q325.65
Dewey Class. No.: 006.31
Cross-device federated recommendation = privacy-preserving personalization /
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