Smart City Gnosys

Smart city article details

Title A Federated Learning Mechanism For Preserving Security Of Sensitive Data
ID_Doc 1663
Authors Sharma S.; Guleria K.
Year 2023
Published 2023 4th International Conference on Data Analytics for Business and Industry, ICDABI 2023
DOI http://dx.doi.org/10.1109/ICDABI60145.2023.10629264
Abstract Federated Learning (FL) is a distributed machine learning(ML) method which allows for model training on information distributed across various servers and devices without sharing the sensitive data. It works by aggregating updates and weight values from the devices while keeping raw data private and secure. FL is a field which is widely used in finance, healthcare, and IoT systems along with personalized recommendations. Traditional ML and deep learning (DL) models are capable of producing good outcomes, however, these algorithms do not provide data security due to directly working on the raw data. Moreover, the FL can avoid security concerns due to its behaviour of sending the model to the data instead of working on the raw data itself. In this work, the FL has been introduced along with its three kinds of architectures. The motivation behind this work is that healthcare departments and financial institutes avoid sharing patients' sensitive information due to privacy concerns. However, the ML and DL models require a vast volume of data for accurate prediction outcomes. Hence, FL has been identified as the best model for working on sensitive data without privacy concerns. Furthermore, the work has also introduced the core challenges and application areas of FL. Moreover, in future, the FL architectures will be implemented with the healthcare dataset to increase data security and efficiently identify the outcomes. © 2023 IEEE.
Author Keywords deep learning; federated learning; healthcare; machine learning; manufacturing; smart cities


Similar Articles


Id Similarity Authors Title Published
28562 View0.914Vasa J.; Thakkar A.; Bhavsar D.; Patel P.Guarding Privacy In Federated Learning: Exploring Threat Landscapes And Countermeasures With Case StudiesLecture Notes in Networks and Systems, 1194 (2025)
26329 View0.893Singh S.; Verma S.B.; Sharma V.; Tiwari S.M.; Agrawal A.Federated Learning Approaches Based On Blockchain In Smart EnvironmentsLecture Notes in Networks and Systems, 1400 LNNS (2025)
45392 View0.887Huang S.; Liang Y.; Shen F.; Gao F.Research On Federated Learning'S Contribution To Trustworthy And Responsible Artificial IntelligenceACM International Conference Proceeding Series (2024)
924 View0.883Mehdi M.; Makkar A.; Conway M.A Comprehensive Review Of Open-Source Federated Learning FrameworksProcedia Computer Science, 260 (2025)
12608 View0.879Li D.; Luo Z.; Cao B.Blockchain-Based Federated Learning Methodologies In Smart EnvironmentsCluster Computing, 25, 4 (2022)
8396 View0.877Sharma P.; Kashniyal J.; Esham E.An Insight Into Federated Learning: A Collaborative Approach For Machine Learning2024 4th International Conference on Advancement in Electronics and Communication Engineering, AECE 2024 (2024)
26365 View0.874Aggarwal M.; Khullar V.; Rani S.; André Prola T.; Bhattacharjee S.B.; Shawon S.M.; Goyal N.Federated Learning On Internet Of Things: Extensive And Systematic ReviewComputers, Materials and Continua, 79, 2 (2024)
6478 View0.872Bhati N.; Vyas N.Advanced Architectures And Innovative Platforms For Federated Learning: A Comprehensive ExplorationModel Optimization Methods for Efficient and Edge AI: Federated Learning Architectures, Frameworks and Applications (2024)
12609 View0.871Kalapaaking A.P.; Khalil I.; Yi X.Blockchain-Based Federated Learning With Smpc Model Verification Against Poisoning Attack For Healthcare SystemsIEEE Transactions on Emerging Topics in Computing, 12, 1 (2024)
26339 View0.87Guo X.Federated Learning For Data Security And Privacy ProtectionProceedings - International Symposium on Parallel Architectures, Algorithms and Programming, PAAP, 2021-December (2021)