Trust and Risk-Based Access Control Model for Zero-Knowledge Oriented Mobile Peer-to-Peer Environments

GreenCom), 2013 IEEE and Internet of Things(2013)

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摘要
In this paper, we propose a Trust and Risk-based Access Control Model (TRACM) for achieving trustworthy resource sharing over mobile P2P networks. With TRACM, many malicious peers are automatically separated from the trusted mobile P2P resource sharing network which consists of benign peers. The main contribution of this model is that the request peers give first priority to connecting the secure resource peers and the resource peers also give first priority to authorizing the trusted request peers. A major difference between TRACM and many existing access control models for P2P networks is that TRACM uses Bayesian Game theory to design an available and survivable access control model for zero-trust knowledge mobile P2P scenarios, and therefore is able to adapt to dynamic mobile P2P environments. Our work appears to be the first attempt to research the access control model under the zero-trust knowledge mobile environment. The simulation results show that our model can greatly improve the download success rate. Furthermore, the experimental results demonstrate that TRACM has lower control overhead than other access control models.
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关键词
lower control overhead,request peer,bayesian game,cryptography,zero-trust knowledge mobile p2p scenarios,survivability,risk-based access control model,zero-trust knowledge,access control model,mobile peer to peer networks,p2p scenario,trusted computing,trusted mobile p2p resource sharing network,existing access control model,bayesian game theory,trust and risk-based access control model,tracm,zero-knowledge oriented mobile peer-to-peer environments,p2p environment,malicious peers,mobile p2p networks,p2p network,authorisation,benign peers,p2p resource sharing network,peer-to-peer computing,mobile environment,dynamic mobile p2p environments,mobile computing,zero-knowledge oriented mobile peer-to-peer,access control
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