Semantic Annotation Based Mechanism for Web Service Discovery and Recommendation

J. Brindha Merin, Dr.W. Aisha Banu, Akila R., Radhika A.
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Abstract

Web Mining is regarded as one among the data mining techniques that aids in fetching and extraction of necessary data from the web. Conversely, Web usage mining discovers and extracts essential patterns usage over the webs which are being further utilized by various web applications. In order to discover and explore web services that are registered with documents of Web Services-Inspection, Discovery and Integration registry, Universal Description wants specific search circumstance similar to URL, category and service name. The document of Web Service Description Language (WSDL) offers a condition of the web services customers to take out operations, communications and the service format of right message. Therefore, WSDL is being utilized together with semantic explanation dependent substantiation for the extraction of different web services for related purpose, other supporting operations and attributes. The reason is that there subsist different web services having corresponding functionalities however altered or changeable attributes that are non–functional. Resultant, recognize the preeminent web service become tiresome for the user. A method is projected which caters the analysis of service resemblance with the aid of semantic annotation and machine learning (ML) algorithms depending on the analysis intended for enhancing the classification through capturing useful web services semantics related with real world. The emphasizes on the research technique of choosing preeminent web service for the user based on the semantic annotation. The research work in turn recommends a web mining technique that determines the best web service automatically thus ranking concepts in service textual documentation and classifies services on behalf of particular domains. Parallel computation is made easy with web services. The different management stages in the system of recommendation entail collection of dataset through WSDL on the semantic annotation basis, thereby recognizing the best service with the DOBT-Dynamic operation dependent discovering method, ranking through mechanisms MDBR - Multi-Dimensional based ranking, recommendation and classification. In this work, it has been employed a combination of fundamental ML estimators, namely Multinomial Naive Bayes (MNB) and Support Vector Machines (SVM), as well as ensemble techniques such as Bagging, Random Forests, and AdaBoost, to perform classification of Web services. It was observed from the investigate work that the adapted system of best web services recommendation defers high performance in contradiction of the existing recommendation technique regarding accuracy, efficiency in addition to processing time.
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基于语义标注的Web服务发现与推荐机制
Web挖掘被认为是数据挖掘技术中的一种,它有助于从Web中获取和提取必要的数据。相反,Web使用挖掘发现和提取Web上使用的基本模式,这些模式被各种Web应用程序进一步利用。为了发现和探索在web服务检查、发现和集成注册中心文档中注册的web服务,通用描述需要类似于URL、类别和服务名称的特定搜索环境。Web服务描述语言(WSDL)的文档提供了Web服务客户进行操作、通信和正确消息的服务格式的条件。因此,WSDL与语义解释相关的证实一起被用于提取不同的web服务,用于相关目的、其他支持操作和属性。原因是存在不同的web服务,这些web服务具有相应的功能,但是改变或改变了非功能性的属性。结果,识别卓越的web服务对用户来说变得乏味。本文提出了一种基于语义注释和机器学习(ML)算法的服务相似性分析方法,该方法旨在通过捕获与现实世界相关的有用web服务语义来增强分类。重点研究了基于语义标注为用户选择优质web服务的技术。研究工作反过来推荐了一种web挖掘技术,该技术可以自动确定最佳web服务,从而对服务文本文档中的概念进行排序,并根据特定领域对服务进行分类。web服务使并行计算变得容易。推荐系统的不同管理阶段需要在语义标注的基础上通过WSDL收集数据集,从而通过dobt -动态操作依赖的发现方法识别最佳服务,通过MDBR -基于多维度的排序、推荐和分类机制进行排序。在这项工作中,它结合了基本的机器学习估计器,即多项朴素贝叶斯(MNB)和支持向量机(SVM),以及集成技术,如Bagging,随机森林和AdaBoost,来执行Web服务分类。从研究工作中可以看出,与现有推荐技术相比,改进后的最佳web服务推荐系统在准确率、效率和处理时间上都有较高的性能要求。
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期刊介绍: JoWUA is an online peer-reviewed journal and aims to provide an international forum for researchers, professionals, and industrial practitioners on all topics related to wireless mobile networks, ubiquitous computing, and their dependable applications. JoWUA consists of high-quality technical manuscripts on advances in the state-of-the-art of wireless mobile networks, ubiquitous computing, and their dependable applications; both theoretical approaches and practical approaches are encouraged to submit. All published articles in JoWUA are freely accessible in this website because it is an open access journal. JoWUA has four issues (March, June, September, December) per year with special issues covering specific research areas by guest editors.
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