A Hybrid Service Ranking Based Collaborative Filtering Model on Cloud Web Service Data

Suvarna S. Pawar, Y. Prasanth
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Abstract

INTRODUCTION: Trust is an important indicator in the cloud computing environment for service selection and recommendation. It is a difficult task to create a composite value-added service from several candidate services for the desired objectives due to the dramatic growth in services that have similar functionalities. OBJECTIVES: This research aims to design a hybrid service feature ranking; cloud service ranking are computed using the advanced contextual service ranking measures. A hybrid collaborative approach is totally based on confidence to the QoS web service prediction. METHODS: A new service ranking similarity computation is optimized for the cloud-based service selection. This collaborative filtering measure is used to check the top k customer selection by performing the top-k customer selection estimation on the cloud service ranking RESULTS: The proposed method is useful in the prediction of QoS values and helps with optimal service ranking. As a result, similar/ relating cloud services are increasing, making it extremely complex to select the best cloud service among the relevant / similar services available CONCLUSION: The state-of the-art approaches are proposed and tested on a mathematical QoS-Aware assessment framework. The use of semantic matching technique and QoS for web service ranking satisfies user requirements for web service recommendations. In addition, users require a web service not only based on functionality, but also based on high quality.
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基于混合服务排名的云Web服务数据协同过滤模型
简介:信任是云计算环境下服务选择和推荐的重要指标。由于具有类似功能的服务的急剧增长,从几个候选服务中为期望的目标创建复合增值服务是一项困难的任务。目的:本研究旨在设计一种混合服务特征排序;云服务排名是使用高级上下文服务排名度量来计算的。混合协作方法完全基于对QoS web服务预测的置信度。方法:针对基于云的服务选择,优化了一种新的服务排序相似度计算方法。该协同过滤度量通过对云服务排名进行top-k客户选择估计来检查top k客户选择。结果:所提出的方法可用于预测QoS值,并有助于实现最优服务排名。因此,类似/相关的云服务正在增加,使得在可用的相关/类似服务中选择最佳云服务变得极其复杂。结论:提出了最先进的方法,并在数学qos感知评估框架上进行了测试。利用语义匹配技术和QoS对web服务进行排序,满足了用户对web服务推荐的需求。此外,用户对web服务的要求不仅基于功能,而且基于高质量。
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