A new fuzzy hybrid technique for ranking real world Web services

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摘要

We propose in this article a new fuzzy hybrid ranking technique, which is based on a linear combination of two new ranking techniques we devised: an objective Fuzzy Distance Correlation Ranking Technique (FDCRT) and a subjective Fuzzy Interval-based Ranking Technique (FSIRT). The objective technique leverages the distance correlation metric to derive weights of quality attributes directly from the available data. The subjective technique computes weights from opinions of domain experts, which are specified via two ingredients: intervals representing acceptable ranges of values for quality attributes and importance values of a quality attribute with respect to the other attributes. We show that the linear combination of these two techniques allows to overcome the shortcomings of objective and subjective techniques. Our experiments are performed on a dataset of real world Web services. The empirical results show that a tuning of the proposed linear combination gives better ranking results than Entropy and Fuzzy AHP separately and even than a linear combination of these two well-known techniques.

论文关键词:Fuzzy logic,Quality of service,Ranking,Web services,Discounted Cumulative Gain

论文评审过程:Received 28 May 2014, Revised 23 November 2014, Accepted 21 December 2014, Available online 29 December 2014.

论文官网地址:https://doi.org/10.1016/j.knosys.2014.12.021