Pairing New Approach of Tree Soft with MCDM Techniques: Toward Advisory an Outstanding Web Service Provider Based on QoS Levels

Sara Fawaz AL-baker, Ibrahim Elhenawy, Mona Mohamed
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Abstract

Web services (WSs) have become dynamic because of technological advancements and internet usage. Hence, selecting a WS provider among a variety of WS providers that perform the same function is a critical process. However, the crucial point is that various consumers may have varied needs when it comes to the quality attributes of services, such as cost, response time, throughput, security, availability, etc. These aspects of Web services are known as quality of service (QoS), or non-functional characteristics. Hence, this issue is the robust motivator for conducting this study. The objective of this study is to evaluate a set of WSs that provide various services for various consumers and organizations. This evaluation is conducted based on a set of QoS attributes. Hence, we are applying a new approach to describe this problem in the form of leaves or branches of a tree or hierarchy. This approach is represented in a soft tree set. Also, we leveraged Multi-Criteria Decision Making (MCDM) techniques such as entropy and weighted sum methods under the authority of the Single Value Neutrosophic (SVN) Scale. The entropy technique analyzes attributes or leaves in each level contained in the tree's soft approach, obtaining attributes’ weights. These weights are used to rank and recommend optimal WS providers through the application of these weights in WSM. The results of implementing entropy-WSM in a tree-soft approach indicated that WS2 is the optimal provider. In contrast, WS3 is the worst provider.
将树状软方法与 MCDM 技术相结合:基于 QoS 水平咨询优秀网络服务提供商
由于技术进步和互联网的使用,网络服务(WS)已变得充满活力。因此,在众多具有相同功能的 WS 提供商中选择一个 WS 提供商是一个至关重要的过程。然而,关键的一点是,不同的消费者对服务的质量属性(如成本、响应时间、吞吐量、安全性、可用性等)可能有不同的需求。网络服务的这些方面被称为服务质量(QoS)或非功能特性。因此,这个问题是开展本研究的强大动力。本研究的目的是评估一组为不同消费者和组织提供各种服务的 WS。评估基于一组 QoS 属性进行。因此,我们采用了一种新方法,以树形或层次结构的树叶或分支的形式来描述这一问题。这种方法用软树集表示。此外,我们还利用了多标准决策(MCDM)技术,如单值中性(SVN)标度下的熵法和加权和法。熵技术分析了树状软方法中包含的每个层次的属性或叶子,从而获得属性的权重。通过在 WSM 中应用这些权重,可对 WS 提供商进行排序并推荐最佳 WS 提供商。在树状软方法中实施熵-WSM 的结果表明,WS2 是最佳提供商。相比之下,WS3 是最差的提供商。
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