Hybrid cognitive model for semantic discovery and selection of services

Shailja Sharma, J. Lather, M. Dave
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引用次数: 1

Abstract

Lack of (semi)automatic mechanisms for service classification in the Universal Description Discovery and Integration repositories and non utilization of explicit or implicit semantic information of a service during its publishing are the two major challenges in the area of web service discovery and selection. We propose a semantic model of human-machine collaboration for the classification, discovery and selection of web services that integrates the semantic as well as syntactic data of the web services to achieve the hybrid cognition. This proposed cognitive approach uses the principals from the machine learning, measures of semantic relatedness and information retrieval where the cognitive information from the WordNet based Omiotis measure of semantic relatedness is merged with the syntactic service profiles and further these semantically enriched service vectors are passed to the supervised learning algorithms to achieve the decision support for the discovery and selection of relevant services. Empirical evaluation of the proposed approach implemented on OWL-X data set has been presented and a comparison of two different supervised classifiers has been made.
语义发现和服务选择的混合认知模型
在通用描述、发现和集成存储库中缺乏(半)自动的服务分类机制,并且在发布期间没有利用服务的显式或隐式语义信息,这是web服务发现和选择领域的两个主要挑战。本文提出了一种用于web服务分类、发现和选择的人机协作语义模型,该模型集成了web服务的语义和句法数据,实现了混合认知。该认知方法利用机器学习、语义关联度量和信息检索的原理,将基于WordNet的Omiotis语义关联度量的认知信息与句法服务概要合并,并将这些语义丰富的服务向量传递给监督学习算法,以实现对相关服务的发现和选择的决策支持。本文对该方法在OWL-X数据集上的实现进行了实证评价,并对两种不同的监督分类器进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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