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首页> 外文期刊>International Journal of Information Technology >Heterogeneous ensemble learning method for personalized semantic web service recommendation
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Heterogeneous ensemble learning method for personalized semantic web service recommendation

机译:异构集合学习方法,用于个性化语义Web服务推荐

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摘要

Semantic web service (SWS) discovery and recommendation (SWSR) has emerged as a potential technology which aims to fulfill the user requirements by providing an improved recommendation for Academic and business communities. In SWSR, the user search pattern is adopted to make service discovery as well as recommendation. In order to achieve the precise recommendation of SWS, the ensemble learning method is utilized. This method encompasses the elimination of in-appropriate features and selects the optimal features of the requirements for the Academic and business communities. Semantic analysis is the one of the dominant technologies for SWSR, but it has not yet been explored by applying the ensemble learning over the service features to make optimal selection of features and to provide personalized recommendation. With this motive, in this paper a Heterogeneous Ensemble Learning method for Semantic web service Personalization and recommendation (HEL-SWSR) framework has been proposed. It will revitalize the industries to select optimal services SWS discovery. HEL-SWSR assists the feature extractions, concatenation of features selection using user profiles and triples from the OWL-S files. This framework combines various methods that eventually ensure service selection through the Maximum Voting Ensemble (MVE) technique. The MVE helps to select the services and recommends the top-10 services. From that list, the Academic or Business communities can be able to predict the appropriate services. The proposed framework performance is noticeably enhanced when compared with the traditional user search pattern technique.
机译:语义Web服务(SWS)发现和推荐(SWSR)已成为潜在的技术,旨在通过为学术和商业社区提供改进的建议来满足用户要求。在SWSR中,采用用户搜索模式来制作服务发现以及推荐。为了实现SWS的精确推荐,利用了集合学习方法。该方法包括消除适当的功能,并选择学术和商业社区要求的最佳特征。语义分析是SWSR的主导技术之一,但尚未通过应用于服务功能的集合学习来探索,以实现最佳选择功能和提供个性化推荐。通过这种动机,在本文中,提出了一种用于语义网络服务个性化和推荐(HEL-SWSR)框架的异构集合学习方法。它将振兴行业选择最佳服务SWS发现。 HEL-SWSR帮助特征提取,使用用户配置文件和来自OWL-S文件的三倍的特征选择的串联。该框架结合了各种方法,最终通过最大的投票合奏(MVE)技术确保服务选择。 MVE有助于选择服务并推荐前10个服务。从该列表中,学术或商业社区可以预测适当的服务。与传统用户搜索模式技术相比,所提出的框架性能明显增强。

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