7th International Conference, MLN 2024, Reims, France, November 27-29, 2024, Revised Selected Papers Herausgegeben:Hacène, Fouchal; Selma, Boumerdassi; Éric, Renault
7th International Conference, MLN 2024, Reims, France, November 27-29, 2024, Revised Selected Papers Herausgegeben:Hacène, Fouchal; Selma, Boumerdassi; Éric, Renault
This book constitutes the refereed proceedings of the 7th International Conference on Machine Learning for Networking, MLN 2024, held in Reims, France, during November 27 29, 2024. The 14 full papers presented in this book were carefully reviewed and selected from 25 submissions. The International Conference on Machine Learning for Networking (MLN) aims at providing a top forum for researchers and practitioners to present and discuss new trends in machine learning, deep learning, pattern recognition and optimization for network architectures and service.
This book constitutes the refereed proceedings of the 7th International Conference on Machine Learning for Networking, MLN 2024, held in Reims, France, during November 27 29, 2024.
The 14 full papers presented in this book were carefully reviewed and selected from 25 submissions. The International Conference on Machine Learning for Networking (MLN) aims at providing a top forum for researchers and practitioners to present and discuss new trends in machine learning, deep learning, pattern recognition and optimization for network architectures and service.
Artikelnr. des Verlages: 89531520, 978-3-032-00551-9
Seitenzahl: 214
Erscheinungstermin: 7. September 2025
Englisch
Abmessung: 235mm x 155mm
ISBN-13: 9783032005519
ISBN-10: 3032005515
Artikelnr.: 74728905
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Springer-Verlag GmbH
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Inhaltsangabe
.- Learning per-flow SD-WAN load-balancing policies. .- Survey on Federated Learning in Smart Healthcare. .- Complex Communication Networks Management with Distributed AI:Challenges and Open Issues. .- A Framework for Global Trust and Reputation Management in 6G Networks. .- DRL Framework for Minimizing Beam Switching Time and Maintaining QoS in 6G-V2X Base Stations. .- Reducing BLE energy loss in busy 2.4GHz band. .- Leveraging SHAP to advance the Robustness of Large Language Models. .- Keyword-Driven Email Classification: Leveraging Machine Learning Techniques. .- Predicting Intents: ARMA-Based Modeling. .- Design and Evaluation of a Lightweight SDN Controller for Integrated Road and Rail Networks. .- PiPS: An effective strategy and approach for Privacy in Public Surveillance. .- A comprehensive review of deep learning approaches for tomato leaf diseases detection and classification in smart agriculture. .- A review on advancement in PEM Fuel cell Diagnosis based on Machine learning techniques. .- GPS Spoofing Attack against UAVs: a timeseries dataset case study.
.- Learning per-flow SD-WAN load-balancing policies. .- Survey on Federated Learning in Smart Healthcare. .- Complex Communication Networks Management with Distributed AI:Challenges and Open Issues. .- A Framework for Global Trust and Reputation Management in 6G Networks. .- DRL Framework for Minimizing Beam Switching Time and Maintaining QoS in 6G-V2X Base Stations. .- Reducing BLE energy loss in busy 2.4GHz band. .- Leveraging SHAP to advance the Robustness of Large Language Models. .- Keyword-Driven Email Classification: Leveraging Machine Learning Techniques. .- Predicting Intents: ARMA-Based Modeling. .- Design and Evaluation of a Lightweight SDN Controller for Integrated Road and Rail Networks. .- PiPS: An effective strategy and approach for Privacy in Public Surveillance. .- A comprehensive review of deep learning approaches for tomato leaf diseases detection and classification in smart agriculture. .- A review on advancement in PEM Fuel cell Diagnosis based on Machine learning techniques. .- GPS Spoofing Attack against UAVs: a timeseries dataset case study.
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