2022
DOI: 10.1002/cpe.7429
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LDP‐Fed+: A robust and privacy‐preserving federated learning based classification framework enabled by local differential privacy

Abstract: As a distributed learning framework, Federated Learning (FL) allows different local learners/participants to collaboratively train a joint model without exposing their own local data, and offers a feasible solution to legally resolve data islands. However, among them, the data privacy and model security are two challenges. The former means that, if original data are used for trained FL models, various methods can be used to deduce the original data samples, thereby causing the leakage of data. The latter impli… Show more

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Cited by 3 publications
(1 citation statement)
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“…119,120 FL121 is another prospective technique for privacy preservation, where AIoT nodes can collaboratively contribute knowledge to the global learner without transmitting data samples to a central server or exchanging data across AIoT nodes. Moreover, the combination of FL with DP has been utilized in References122,123 …”
mentioning
confidence: 99%
“…119,120 FL121 is another prospective technique for privacy preservation, where AIoT nodes can collaboratively contribute knowledge to the global learner without transmitting data samples to a central server or exchanging data across AIoT nodes. Moreover, the combination of FL with DP has been utilized in References122,123 …”
mentioning
confidence: 99%