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Abstract:
Analyzing network and user behavior is very important for a trusted network. We proposed a trust management architecture in this study that can evolve and maintain the behavior trust based on user's historical behavior as well as correspondent trust level. By collecting network traffic data from network and analyzing them by means of sliding window technology, normal patterns of network behavior are constructed. Taking them as expected behavior, abnormal data flow during its runtime can be detected by monitoring the running network. Moreover, assessment, prediction and control approaches of user's trusted behavior based on Bayesian network are proposed. The relationship between quantifiable evidence and the level of trust assessment including multi-attributes such as reliability is built. An example is used to illustrate how our model evolves and manages trust for different trust attributes. Experimental result shows that the framework and approaches in this study can control attacks in a limited range and time and predict trusted behavior level, which can improve the security and reliability of servers. © 2012 Binary Information Press.
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Source :
Journal of Computational Information Systems
ISSN: 1553-9105
Year: 2012
Issue: 12
Volume: 8
Page: 4959-4967
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ESI Highly Cited Papers on the List: 0 Unfold All
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30 Days PV: 5
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