数据密集型mooc及其主要挑战的系统分析

R. Nisha, R. Radha
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引用次数: 1

摘要

大数据将现代技术与众多数据管理技术相结合,以处理在处理大量、种类和速度巨大的数据时发生的各种各样的问题。大数据处理来自多种来源和格式的复杂半结构化和非结构化数据,包括自由形式的社交媒体内容、电子商务网站数据、天气预报统计、临床诊断、股票市场交易和智能计算环境。同样,大数据在教育、电子学习和学习分析等领域也提供了可观的前景。在E-Learning中应用大数据分析有助于评估教学质量、课程开发、预测学习成果、职业发展和准备、流失风险和反馈分析。大规模在线开放课程(MOOCs)对电子学习产生了重大影响,它提供了直播和预先录制的讲座、易于学习的教程、新颖的评估方法、快速的反馈和结果。在本文中,我们介绍了构建mooc的各种技术,并解决了学习范式和主要挑战。
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A Systematic analysis of Data-intensive MOOCs and their key Challenges
Big Data blends modern technologies with numerous data management techniques to handle a wide variety of concerns that occur when operating with data of huge volume, variety and velocity. Big data deals with complex semi-structured and unstructured data from several sources and formats which include Social Media content in free form, data from E-commerce sites, Weather forecasting statistics, Clinical Diagnosis, Share Market Transactions and Smart Computing Environments. In the same way, big data offers substantial prospects in the discipline of Education, E- Learning and Learning Analytics. Application of big data analytics in E-Learning helps to assess the quality of Teaching, Development of Curriculum, predict learning outcomes, Career Development and Readiness, Attrition Risks and Feedback Analysis. The Massive Open Online Courses (MOOCs) have produced a major influence on E-Learning with the availability of Live and pre-recorded Lectures, Easy-to-learn Tutorials, Novel Assessment Methodologies, Quick feedback and results. In this paper, we present the various Technologies that formulate the MOOCs and address the learning paradigms and key challenges.
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