Combining QoS prediction and customer satisfaction estimation to solve cloud service trustworthiness evaluation problems
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摘要
The collection and combination of assessment data in trustworthiness evaluation of cloud service is challenging, notably because QoS value may be missing in offline evaluation situation due to the time-consuming and costly cloud service invocation. Considering the fact that many trustworthiness evaluation problems require not only objective measurement but also subjective perception, this paper designs a novel framework named CSTrust for conducting cloud service trustworthiness evaluation by combining QoS prediction and customer satisfaction estimation. The proposed framework considers how to improve the accuracy of QoS value prediction on quantitative trustworthy attributes, as well as how to estimate the customer satisfaction of target cloud service by taking advantages of the perception ratings on qualitative attributes. The proposed methods are validated through simulations, demonstrating that CSTrust can effectively predict assessment data and release evaluation results of trustworthiness.
论文关键词:Cloud computing,Service trustworthiness,Multi-attribute evaluation,QoS prediction,Customer satisfaction
论文评审过程:Received 12 February 2013, Revised 10 November 2013, Accepted 16 November 2013, Available online 23 November 2013.
论文官网地址:https://doi.org/10.1016/j.knosys.2013.11.014