Membership inference attack on differentially private block coordinate descent.
Differential privacy
Differentially private block coordinate descent
Membership inference attack
Privacy-preserving deep learning
Journal
PeerJ. Computer science
ISSN: 2376-5992
Titre abrégé: PeerJ Comput Sci
Pays: United States
ID NLM: 101660598
Informations de publication
Date de publication:
2023
2023
Historique:
received:
03
06
2023
accepted:
05
09
2023
medline:
23
10
2023
pubmed:
23
10
2023
entrez:
23
10
2023
Statut:
epublish
Résumé
The extraordinary success of deep learning is made possible due to the availability of crowd-sourced large-scale training datasets. Mostly, these datasets contain personal and confidential information, thus, have great potential of being misused, raising privacy concerns. Consequently, privacy-preserving deep learning has become a primary research interest nowadays. One of the prominent approaches adopted to prevent the leakage of sensitive information about the training data is by implementing differential privacy during training for their differentially private training, which aims to preserve the privacy of deep learning models. Though these models are claimed to be a safeguard against privacy attacks targeting sensitive information, however, least amount of work is found in the literature to practically evaluate their capability by performing a sophisticated attack model on them. Recently, DP-BCD is proposed as an alternative to state-of-the-art DP-SGD, to preserve the privacy of deep-learning models, having low privacy cost and fast convergence speed with highly accurate prediction results. To check its practical capability, in this article, we analytically evaluate the impact of a sophisticated privacy attack called the membership inference attack against it in both black box as well as white box settings. More precisely, we inspect how much information can be inferred from a differentially private deep model's training data. We evaluate our experiments on benchmark datasets using AUC, attacker advantage, precision, recall, and F1-score performance metrics. The experimental results exhibit that DP-BCD keeps its promise to preserve privacy against strong adversaries while providing acceptable model utility compared to state-of-the-art techniques.
Identifiants
pubmed: 37869463
doi: 10.7717/peerj-cs.1616
pii: cs-1616
pmc: PMC10588713
doi:
Types de publication
Journal Article
Langues
eng
Pagination
e1616Informations de copyright
© 2023 Riaz et al.
Déclaration de conflit d'intérêts
The authors declare that they have no competing interests.
Références
PLoS Genet. 2008 Aug 29;4(8):e1000167
pubmed: 18769715
Nature. 2015 May 28;521(7553):436-44
pubmed: 26017442
Proc USENIX Secur Symp. 2014 Aug;2014:17-32
pubmed: 27077138
PeerJ Comput Sci. 2023 Jan 25;9:e1221
pubmed: 37346608