ABSTRACT
Despite the successes of commercial cloud service e-marketplaces, opportunities still
exist to improve user experience as these e-marketplaces do not yet enable dynamic
composition of atomic services to satisfy complex user requirements. More so, the
platforms employ keyword-based search mechanisms that only allow the selection of
atomic services. The elicitation mechanisms do not consider user’s QoS requirements, nor
support the elicitation of these requirements in ways akin to subjective human
expressions. In addition, search results are presented as unordered lists of icons, with
minimal comparison apparatus to simplify decision making. Existing cloud selection
approaches do not currently provide the sophistication required to optimise user
experience in the cloud e-marketplace, hence this study proposed a framework to address
the observed limitations. First, a state-of-the-art survey was conducted and six design
criteria were identified for a selection framework suitable for cloud e-marketplaces. These
criteria guided the formulation of an integrated framework, Fuzzy-Oriented Cloud
Service Selection (FOCUSS) framework. The proposed framework comprises four
modules: Cloud ecosystem and service directory, Graphical User Interface (GUI) &
Visualisation, QoS Requirement Processing, and Service Evaluation & QoS Ranking
modules. In the first module, atomic services are combined to realise the set of composite
services offered in the e-marketplace; subjective QoS requirements are then inputted via
the GUI module, and processed in the QoS requirements processing module. In service
evaluation and ranking module, the requirements are optimised and used to rank services
and the ranking results are shown to the users via bubble graph visualisation. The utility
of the proposed framework was demonstrated via a Java-based web application prototype
using a case study of a Customer Relationship Management-as-a-Service e-marketplace.
Simulation experiments and user studies were performed to evaluate the performance of
the proposed framework in terms of its scalability, ranking accuracy, and quality of user
experience. A linear regression analysis showed that the proposed framework is linearly
scalable when measured by the time it took to rank top-20 services as the number of
alternatives increased. Kruskal-Wallis and Mann-Whitney tests revealed that ranking
accuracy of proposed framework is not compromised by using subjective descriptors to
approximate user’s QoS requirements, and the ranking accuracy is higher compared to
existing approaches. Based on Wilcox signed tests, the results of the user studies showed
that users can complete tasks faster and easier compared to traditional tabular
representations. These results confirmed that the proposed framework is viable for cloud
service selection in cloud e-marketplaces. This study contributes to knowledge by
providing an integrated framework for cloud service selection that organises atomic
services within the cloud ecosystem and guides formal service composition on the fly
beyond what atomic services can deliver; handle both subjective users QoS preferences
and aspiration, and enable easy comparison of query results along multiple QoS
dimensions. In addition, it provides a framework will improve user experience, which in
turn boosts the commercial viability of cloud e-marketplaces.
ANSALEM, E (2021). A Fuzzy-Oriented Framework For Service Ranking And Selection In Cloud E-Marketplaces. Afribary. Retrieved from https://tracking.afribary.com/works/a-fuzzy-oriented-framework-for-service-ranking-and-selection-in-cloud-e-marketplaces
ANSALEM, EZENWOKE "A Fuzzy-Oriented Framework For Service Ranking And Selection In Cloud E-Marketplaces" Afribary. Afribary, 19 May. 2021, https://tracking.afribary.com/works/a-fuzzy-oriented-framework-for-service-ranking-and-selection-in-cloud-e-marketplaces. Accessed 24 Nov. 2024.
ANSALEM, EZENWOKE . "A Fuzzy-Oriented Framework For Service Ranking And Selection In Cloud E-Marketplaces". Afribary, Afribary, 19 May. 2021. Web. 24 Nov. 2024. < https://tracking.afribary.com/works/a-fuzzy-oriented-framework-for-service-ranking-and-selection-in-cloud-e-marketplaces >.
ANSALEM, EZENWOKE . "A Fuzzy-Oriented Framework For Service Ranking And Selection In Cloud E-Marketplaces" Afribary (2021). Accessed November 24, 2024. https://tracking.afribary.com/works/a-fuzzy-oriented-framework-for-service-ranking-and-selection-in-cloud-e-marketplaces