Security and Communication Networks
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Acceptance rate31%
Submission to final decision85 days
Acceptance to publication42 days
CiteScore4.200
Impact Factor1.288

Distributed Outsourced Privacy-Preserving Gradient Descent Methods among Multiple Parties

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Security and Communication Networks provides a prestigious forum for the R&D community in academia and industry working at the interdisciplinary nexus of next generation communications technologies for security implementations in all network layers.

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Security and Communication Networks
Publishing Collaboration
More info
Wiley Hindawi logo
 Journal metrics
Acceptance rate31%
Submission to final decision85 days
Acceptance to publication42 days
CiteScore4.200
Impact Factor1.288
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