Visible to the public Multiple Attributes Based Spoofing Detection Using an Improved Clustering Algorithm in Mobile Edge Network

TitleMultiple Attributes Based Spoofing Detection Using an Improved Clustering Algorithm in Mobile Edge Network
Publication TypeConference Paper
Year of Publication2018
AuthorsXia, S., Li, N., Xiaofeng, T., Fang, C.
Conference Name2018 1st IEEE International Conference on Hot Information-Centric Networking (HotICN)
ISBN Number978-1-5386-4870-4
Keywordscloud computing, cloud platform, cluster algorithm, clustering algorithm, Clustering algorithms, distributed network architecture, edge computing, Heuristic algorithms, ICN, Image edge detection, Information Centric Network, Information Centric Networks, Internet, Intrusion detection, MEC network, mobile computing, Mobile Edge Computing, mobile edge computing network, multiple attributes, multiple channel attributes, pattern clustering, pubcrawl, Resiliency, Scalability, security of data, security problems, spoofing detection, spoofing detection method
Abstract

Information centric network (ICN) based Mobile Edge Computing (MEC) network has drawn growing attentions in recent years. The distributed network architecture brings new security problems, especially the identity security problem. Because of the cloud platform deployed on the edge of the MEC network, multiple channel attributes can be easily obtained and processed. Thus this paper proposes a multiple channel attributes based spoofing detection mechanism. To further reduce the complexity, we also propose an improved clustering algorithm. The simulation results indicate that the proposed spoofing detection method can provide near-optimal performance with extremely low complexity.

URLhttps://ieeexplore.ieee.org/document/8605953
DOI10.1109/HOTICN.2018.8605953
Citation Keyxia_multiple_2018