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- Title
Privacy-preserving identification of the influential nodes in networks.
- Authors
Wang, Jia-Wei; Zhang, Hai-Feng; Ma, Xiao-Jing; Wang, Jing; Ma, Chuang; Zhu, Pei-Can
- Abstract
Identifying influential nodes in social networks has drawn significant attention in the field of network science. However, most of the existing works request to know the complete structural information about networks, indeed, this information is usually sensitive, private and hard to obtain. Therefore, how to identify the influential nodes in networks without disclosing privacy is especially important. In this paper, we propose a privacy-preserving (named as HE-ranking) framework to identify influential nodes in networks based on homomorphic encryption (HE) protocol. The HE-ranking method collaboratively computes the nodes' importance and protects the sensitive information of each private network by using the HE protocol. Extensive experimental results indicate that the method can effectively identify the influential nodes in the original networks than the baseline methods which only use each private network to identify influential nodes. More importantly, the HE-ranking method can protect the privacy of each private network in different parts.
- Subjects
PRIVATE networks; INFORMATION networks; SOCIAL networks; PRIVACY
- Publication
International Journal of Modern Physics C: Computational Physics & Physical Computation, 2023, Vol 34, Issue 10, p1
- ISSN
0129-1831
- Publication type
Article
- DOI
10.1142/S0129183123501280