Research Area:  Big Data
Data collection in big data is an effective way to aggregate information that the collector is interested in. However, there is no assurance for the data that the users provide. Since collector does not have the ability to check the authenticity of every piece of information, the trustworthiness of users participated in the collection become important. In this paper, we design an efficient approach to calculate users trustworthiness in data collection for big data context. We divide the trustworthiness into familiarity trustworthiness and similarity trustworthiness, and study the influences of user actions on trustworthiness. To prevent malicious users from raising their trustworthiness and providing false information that may mislead final results, we also design a security queue to record users historical trust information, so that we can detect malicious users with high accuracy. Simulation results show that our model can sensitively resist the malicious actions of users.
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Author(s) Name:  Jiahui Yu,Kun Wang,Peng Li,Rui Xia,Song Guo and Minyi Guo
Journal name:  IEEE Transactions on Big Data
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Publisher name:  IEEE
DOI:  10.1109/TBDATA.2017.2761386
Volume Information:  pp. 1-1
Paper Link:   https://www.computer.org/csdl/journal/bd/5555/01/08063921/13rRUxYrbWz