基于自然语言处理的动态网页标注系统

Mohammad Smadi, Mohammad Hawash, Omar Daqqa, Amjad Hawash, Ahmed Awad
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引用次数: 0

摘要

网络标注已经成为人们通过在网页内容上附加注释来表达思想和情感的一种重要技术。具有相同兴趣的注释者可以通过进行普遍的在线协作来交流他们的想法和经验。提交注释的想法依赖于在网站的内容上附加声音或文本注释。然而,注释动态数据是一个鼓励研究人员寻找适当解决方案的问题。由于网站注释内容的变化而丢失注释肯定会导致注释者之间失去预期的协作。这项工作是通过利用NLP(自然语言处理)算法计算删除(或重新定位)注释文本与动态网站中剩余文本之间的文本相似性来注释动态网站。带有动态内容的附加注释将被附加到网站上最相关的文本上。通过这种方式,注释者不会丢失他们的注释和回复,因此他们的协作将继续存在。在这项工作中进行的实验测试反映了令人鼓舞的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Annotation System for Dynamic Web Pages Driven by NLP
Web annotation has become an essential technique to express people's thoughts and feelings by attaching annotations to web content. Annotators with the same interests can exchange their ideas and experiences by conducting universal online collaborations. The idea of submitting annotations depends on attaching vocal or textual notes with the contents of websites. However, annotating dynamic data is a problem that encourages researchers to work on proper solutions. Losing annotations because of the change in website annotated contents will definitely lead to losing the intended collaboration between annotators. This work is related to annotating dynamic websites by computing the textual similarity between erased (or relocated) annotated text and the remained text in dynamic websites by exploiting NLP (Natural Language Processing) algorithms. The attached annotation with dynamic content will be attached to the most related text on the website. By this, annotators will not lose their annotations and replies and hence their collaboration will remain. The experimental tests conducted in this work reflect promising results.
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