论文标题
开放MOOC评论的大规模分析以支持学习者的课程选择
Large Scale Analysis of Open MOOC Reviews to Support Learners' Course Selection
论文作者
论文摘要
最近的大流行改变了我们看到教育的方式。不足为奇的是,儿童和大学生并不是唯一使用在线教育的人。去年,数以百万计的成年人报名参加了在线课程和课程,而MOOC提供商(例如Coursera或EDX)报告说,数百万新用户在其平台上注册。但是,学生在选择课程时确实面临一些挑战。尽管在线审查系统是许多垂直领域的标准,但是MOOC生态系统中没有标准化或完全分散的审核系统。在这种情况下,我们认为有机会利用可用的开放MOOC评论来建立更简单,更透明的审核系统,从而使用户能够真正识别出最佳的课程。具体而言,在我们的研究中,我们分析了来自五个不同平台的240万次评论(这是最大的MOOC评论数据集),以确定以下几个平台以确定以下内容:(1)如果数字评级为学习者提供判别信息,(2)如果NLP驱动的情绪分析可以为学习者提供重要的信息,以便为学习者提供重要的信息,以了解我们的n liven n,如果我们可以通过(3)来了解nlp-(3),(3),(3)如果我们能够为nlp提供nlp-dreed-drevired-drevired-drevired-drpdrprived nlp-drpdrp drprpriven-drpdrp-(3)学习者,(4)如果我们可以使用这些模型来有效地根据开放评论来表征MOOC。结果表明,数字评分显然是偏见的(其中63%是5星级评分),主题建模揭示了与课程广告,实际适用性或不同课程的难度相关的一些有趣的主题。我们希望我们的研究能够阐明该领域,并在在线教育评论中促进更透明的方法,随着我们进入大流行时代,这些方法变得越来越受欢迎。
The recent pandemic has changed the way we see education. It is not surprising that children and college students are not the only ones using online education. Millions of adults have signed up for online classes and courses during last years, and MOOC providers, such as Coursera or edX, are reporting millions of new users signing up in their platforms. However, students do face some challenges when choosing courses. Though online review systems are standard among many verticals, no standardized or fully decentralized review systems exist in the MOOC ecosystem. In this vein, we believe that there is an opportunity to leverage available open MOOC reviews in order to build simpler and more transparent reviewing systems, allowing users to really identify the best courses out there. Specifically, in our research we analyze 2.4 million reviews (which is the largest MOOC reviews dataset used until now) from five different platforms in order to determine the following: (1) if the numeric ratings provide discriminant information to learners, (2) if NLP-driven sentiment analysis on textual reviews could provide valuable information to learners, (3) if we can leverage NLP-driven topic finding techniques to infer themes that could be important for learners, and (4) if we can use these models to effectively characterize MOOCs based on the open reviews. Results show that numeric ratings are clearly biased (63\% of them are 5-star ratings), and the topic modeling reveals some interesting topics related with course advertisements, the real applicability, or the difficulty of the different courses. We expect our study to shed some light on the area and promote a more transparent approach in online education reviews, which are becoming more and more popular as we enter the post-pandemic era.