Course Recommendation, Exploratory Data Analysis And Visualizations of Massive Open Online Courses (MOOCS)

Noman Islam, Abdul Rafay Khan, Umair Ahmed, Ahmed Jaffer, Shamim Akhtar
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引用次数: 0

Abstract

Users and learners nowadays are seeking their education on online platforms such as Open edX, Udemy, Udacity, and Coursera. However, online learners are faced with cumbersome tasks and various challenges to search for the required courses matching their individual goals, knowledge, and interest. With the huge amount of data and material available over the internet for MOOCs, users often face the difficulty of making the right decision to choose the right course that perfectly defines their interest and fulfills their learning requirements. Hence, the lack of targeted recommendations for MOOCs can drive users to choose irrelevant MOOCs. Recommender System (RS) plays a crucial role in assisting learners to find appropriate MOOCs to improve learners’ engagements and their satisfaction/completion rates on the courses that satisfy their learning requirements. Basically, the aim is to visualize the student's areas of interest, which should not differ from the course recommendation and the overall structure of the course.
大规模在线开放课程(mooc)的课程推荐、探索性数据分析与可视化
如今,用户和学习者都在Open edX、Udemy、Udacity和Coursera等在线平台上接受教育。然而,在线学习者在寻找符合个人目标、知识和兴趣的必修课方面面临着繁琐的任务和各种挑战。面对网络上海量的mooc数据和资料,用户往往面临着如何做出正确决定的难题,即选择合适的课程,以完美地定义他们的兴趣并满足他们的学习需求。因此,缺乏针对mooc的针对性推荐会导致用户选择不相关的mooc。推荐系统(RS)在帮助学习者找到合适的mooc以提高学习者的参与度和他们对满足学习要求的课程的满意度/完成率方面起着至关重要的作用。基本上,目标是可视化学生感兴趣的领域,这应该与课程推荐和课程的整体结构没有什么不同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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