Ding Shuai, Xia Cheng-Yi, Zhou Kai-Le, Yang Shan-Lin, Shang Jennifer S
School of Management, Hefei University of Technology, Hefei, P.R. China; Key Laboratory of Process Optimization and Intelligent Decision-Making, Ministry of Education, Hefei, P.R. China.
The Joseph M. Katz Graduate School of Business, University of Pittsburgh, Pittsburgh, Pennsylvania, United States of America.
PLoS One. 2014 Jun 27;9(6):e97762. doi: 10.1371/journal.pone.0097762. eCollection 2014.
Facing a customer market with rising demands for cloud service dependability and security, trustworthiness evaluation techniques are becoming essential to cloud service selection. But these methods are out of the reach to most customers as they require considerable expertise. Additionally, since the cloud service evaluation is often a costly and time-consuming process, it is not practical to measure trustworthy attributes of all candidates for each customer. Many existing models cannot easily deal with cloud services which have very few historical records. In this paper, we propose a novel service selection approach in which the missing value prediction and the multi-attribute trustworthiness evaluation are commonly taken into account. By simply collecting limited historical records, the current approach is able to support the personalized trustworthy service selection. The experimental results also show that our approach performs much better than other competing ones with respect to the customer preference and expectation in trustworthiness assessment.
面对客户对云服务可靠性和安全性需求不断上升的市场,可信度评估技术对于云服务选择变得至关重要。但这些方法对大多数客户来说遥不可及,因为它们需要相当多的专业知识。此外,由于云服务评估通常是一个成本高昂且耗时的过程,为每个客户衡量所有候选服务的可信属性并不实际。许多现有模型难以轻松处理历史记录非常少的云服务。在本文中,我们提出了一种新颖的服务选择方法,该方法同时考虑了缺失值预测和多属性可信度评估。通过简单收集有限的历史记录,当前方法能够支持个性化的可信服务选择。实验结果还表明,在可信度评估方面,我们的方法在满足客户偏好和期望方面比其他竞争方法表现得好得多。