How useful are semantic links for the detection of implicit references in CSCL chats?

Traian Rebedea, Costin-Gabriel Chiru, Gabriel Gutu
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引用次数: 2

Abstract

Chat conversations are used for a large range of Computer-Supported Collaborative Learning (CSCL) tasks especially because they allow the creation of multiple conversation threads that run in parallel. Thus, several different topics can be debated at the same time, fostering the exploitation of different ideas and facilitating collaborative knowledge creation. In order to detect these threads, our method proposed to firstly detect the links that arise between the utterances of a conversation. From a computational linguistics perspective, there is a wide variety of different types of links between utterances and there is no mechanism to compute all of them. This paper proposes to explain to what degree semantic similarity measures from Natural Language Processing (NLP) may be used to detect the links that arise between utterances in CSCL chat conversations and which is the effectiveness of applying solely this technique for implicit links identification.
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语义链接对CSCL聊天中的隐式引用的检测有多有用?
聊天会话用于大范围的计算机支持的协作学习(CSCL)任务,特别是因为它们允许创建并行运行的多个会话线程。因此,可以同时讨论几个不同的主题,促进不同思想的利用,促进协作知识的创造。为了检测这些线索,我们提出的方法首先检测对话中话语之间出现的链接。从计算语言学的角度来看,话语之间存在各种不同类型的联系,并且没有机制可以计算所有这些联系。本文试图解释自然语言处理(NLP)的语义相似度量在多大程度上可以用于检测CSCL聊天对话中话语之间产生的链接,以及仅将该技术用于隐式链接识别的有效性。
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