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Methods of Extracting Useful Discussion Cases on Social Media for Promoting Novices’ Experience

机译:提取促进新手经验的社会媒体有用讨论案例的方法

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Due to the growing importance of skills for proactively finding problems and solutions, many educational institutions provide student-centered exercises such as PBL. In particular, discussion skills are some of the most important for exchanging opinions with other students and summarizing one’s own thoughts. For inexperienced students, gaining the experience necessary to understand the flow of discussions and speak precisely is important but difficult. Currently, discussions on social media have become popular, and this is a promising source that should be utilized as a reference for unskilled people. In this research, we aim to develop a mechanism for helping unskilled students gain discussion experience on social media. Specifically, we initially develop methods for extracting from Twitter discussions that have topics similar to a discussion of interest. Moreover, we develop methods for extracting discussion structures from accumulated utterances on the basis of an analysis of utterance-response relationships. On the basis of these methods, we finally develop a system for helping students gain such experience by visualizing discussion cases. In this paper, we mainly describe the methods for extracting cases along with an overview of the support provided. In addition, we describe an experiment using actual tweets and discuss the characteristics of our methods on the basis of the results.
机译:由于技能积极寻找问题和解决方案的技能越来越重要,许多教育机构都提供了以学生为中心的练习,如PBL。特别是,讨论技巧是与其他学生交换意见的一些最重要的,并总结一个人自己的想法。对于缺乏经验的学生,获得了解讨论流程所需的经验,并且恰恰谈论是重要的,但困难。目前,关于社交媒体的讨论变得流行,这是一个有希望的来源,应该用作非熟练的人的参考。在这项研究中,我们的目标是制定一种帮助不熟练的学生在社交媒体上讨论经验的机制。具体而言,我们最初开发从Twitter讨论中提取的方法,这些讨论具有类似于对兴趣讨论的主题。此外,我们在对话语响应关系的分析的基础上开发用于从积累的话语中提取讨论结构的方法。在这些方法的基础上,我们终于开发了一个帮助学生通过可视化讨论案件获得此类经验的系统。在本文中,我们主要描述提取案例的方法以及提供的支持的概述。此外,我们还描述了使用实际推文的实验,并在结果的基础上讨论了我们方法的特征。

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