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首页> 外文期刊>International Journal of Web & Semantic Technology >A Machine Learning Based Analytical Framework for Semantic Annotation Requirements
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A Machine Learning Based Analytical Framework for Semantic Annotation Requirements

机译:基于机器学习的语义注释需求分析框架

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The Semantic Web is an extension of the current web in which information is given well-defined meaning. The perspective of Semantic Web is to promote the quality and intelligence of the current web by changing its contents into machine understandable form. Therefore, semantic level information is one of the cornerstones of the Semantic Web. The process of adding semantic metadata to web resources is called Semantic Annotation. There are many obstacles against the Semantic Annotation, such as multilinguality, scalability, and issues which are related to diversity and inconsistency in content of different web pages. Due to the wide range of domains and the dynamic environments that the Semantic Annotation systems must be performed on, the problem of automating annotation process is one of the significant challenges in this domain. To overcome this problem, different machine learning approaches such as supervised learning, unsupervised learning and more recent ones like, semi-supervised learning and active learning have been utilized. In this paper we present an inclusive layered classification of Semantic Annotation challenges and discuss the most important issues in this field. Also, we review and analyze machine learning applications for solving semantic annotation problems. For this goal, the article tries to closely study and categorize related researches for better understanding and to reach a framework that can map machine learning techniques into the Semantic Annotation challenges and requirements.
机译:语义网是当前网的扩展,其中信息具有明确定义的含义。语义Web的观点是通过将其内容更改为机器可理解的形式来提高当前Web的质量和智能。因此,语义级别信息是语义网的基石之一。将语义元数据添加到Web资源的过程称为语义注释。语义注释存在许多障碍,例如多语言性,可伸缩性以及与不同网页内容的多样性和不一致有关的问题。由于必须执行语义注释系统的广泛领域和动态环境,自动执行注释过程的问题是该领域中的重大挑战之一。为了克服这个问题,已经使用了不同的机器学习方法,例如监督学习,非监督学习以及最近的诸如半监督学习和主动学习。在本文中,我们提出了语义注释挑战的包容性分层分类,并讨论了该领域中最重要的问题。此外,我们回顾并分析了用于解决语义标注问题的机器学习应用程序。为了这个目标,本文尝试对相关研究进行仔细研究和分类,以更好地理解,并建立一个可以将机器学习技术映射到语义注释挑战和要求中的框架。

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