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An Intelligent Platform with Automatic Assessment and Engagement Features for Active Online Discussions

机译:具有自动评估和参与功能的智能平台,可以进行积极的在线讨论

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In a university context, discussion forums are mostly available in Learning and Management Systems (LMS) but are often ineffective in encouraging participation due to poorly designed user interface and the lack of motivating factors to participate. Our integrated platform with the Telegram mobile app and a web-based forum, is capable of automatic thoughtfulness assessment of questions and answers posted, using text mining and Natural Language Processing (NLP) methodologies. We trained and applied the Random Forest algorithm to provide instant thoughtfulness score prediction for the new posts contributed by the students, and prompted the students to improve on their posts, thereby invoking deeper thinking resulting in better quality contributions. In addition, the platform is designed with six features to ensure that students remain actively engaged on the platform. We report the performance of our platform based on our implementations for a university course in two runs, and compare with existing systems to show that by using our platform, students' participation and engagement are highly improved, and the quality of posts will increase. Most importantly, our students' performance in the course was shown to be positively correlated with their participation in the system.
机译:在大学环境中,讨论论坛通常可在学习和管理系统(LMS)中使用,但由于用户界面设计不良和缺乏激励因素,因此在鼓励参与方面通常无效。我们具有Telegram移动应用程序和基于Web的论坛的集成平台,能够使用文本挖掘和自然语言处理(NLP)方法对发布的问题和答案进行自动的思想评估。我们训练并应用了随机森林算法,为学生贡献的新帖子提供即时的体贴评分预测,并促使学生改善自己的帖子,从而激发更深刻的思考,从而提高质量。此外,该平台具有六个功能,可确保学生保持积极参与该平台的能力。我们基于两次大学课程的实施情况报告了该平台的性能,并与现有系统进行了比较,以表明通过使用我们的平台,学生的参与度和参与度得到了极大的提高,职位的质量将得到提高。最重要的是,我们的学生在课程中的表现与他们对系统的参与程度呈正相关。

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