QoE Estimation for Web Service Selection Using a Fuzzy-Rough Hybrid Expert System

Jeevan Pokhrel, F. Lalanne, A. Cavalli, Wissam Mallouli
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引用次数: 23

Abstract

With the proliferation of web services on the Inter-net, it has become important for service providers to select the best services for their clients in accordance to their functional and non-functional requirements. Generally, QoS parameters are used to select the most performing web services, however, these parameters do not necessarily reflect the user's satisfaction. Therefore, it is necessary to estimate the quality of web services on the basis of user satisfaction, i.e., Quality of Experience(QoE). In this paper, we propose a novel method based on a fuzzy-rough hybrid expert system for estimating QoE of web services for web service selection. It also presents how different QoS parameters impact the QoE of web services. For this, we conducted subjective tests in controlled environment with real users to correlate QoS parameters to subjective QoE. Based on this subjective test, we derive membership functions and inference rules for the fuzzy system. Membership functions are derived using a probabilistic approach and inference rules are generated using Rough Set Theory (RST). We evaluated our system in a simulated environment in MATLAB. The simulation results show that the estimated web quality from our system has a high correlation with the subjective QoE obtained from the participants in controlled tests.
基于模糊-粗糙混合专家系统的Web服务选择QoE估计
随着internet上web服务的激增,服务提供者根据其客户的功能和非功能需求为其选择最佳服务变得非常重要。通常使用QoS参数来选择性能最好的web服务,但这些参数并不一定反映用户的满意度。因此,有必要在用户满意度的基础上评估web服务的质量,即体验质量(QoE)。本文提出了一种基于模糊-粗糙混合专家系统的web服务质量评价方法,用于web服务选择。本文还介绍了不同的QoS参数如何影响web服务的QoE。为此,我们在受控环境下与真实用户进行主观测试,将QoS参数与主观QoE关联起来。在此主观检验的基础上,导出了模糊系统的隶属函数和推理规则。利用概率方法推导隶属函数,利用粗糙集理论生成推理规则。我们在MATLAB仿真环境中对系统进行了评估。仿真结果表明,系统的web质量估计值与受控测试参与者的主观QoE具有较高的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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