使用语义标注方法提取相关学习对象

Boutheina Smine, Rim Faiz, Jean-Pierre Desclés
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引用次数: 8

摘要

在我们的语境中,信息研究是指从文献中获取进一步学习信息的信息检索。然而,基于语义标签的自动学习信息检索工具还不是很有效。本文提出了一个基于语义元数据的文本自动标注模型。这些元数据将允许我们索引并从文本中提取学习对象。该模型由两部分组成:第一部分是根据学习对象的语义类别(定义、示例、练习等)对其进行语义标注。第二部分使用第一部分生成的自动语义注释来创建语义倒排索引,该索引能够为与语义类别相关的查询找到相关的学习对象。我们在该模型的基础上实施了一个名为SRIDOP的系统,并验证了其有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extracting relevant learning objects using a semantic annotation method
Information research refers, in our context, to information retrieval to obtain further learning information from documents. However, automatic tools for learning information retrieval from these documents based on semantic tags are not yet effective. We propose here a model which aims at automatically annotating texts with semantic metadata. These metadata will allow us to index and extract learning objects from texts. This model is composed of two parts: the first part consists of a semantic annotation of learning objects according to their semantic categories (definition, example, exercise, etc.). The second part uses automatic semantic annotation which is generated by the first part to create a semantic inverted index able to find relevant learning objects for queries associated with semantic categories. We have implemented a system called SRIDOP, on the basis of the proposed model and we have verified its effectiveness.
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