Text stream mining for Massive Open Online Courses: review and perspectives. Shatnawi, S., Gaber, M., M., & Cocea, M. Systems Science & Control Engineering, 2(1):664-676, Taylor & Francis, 10, 2014.
Text stream mining for Massive Open Online Courses: review and perspectives [link]Website  abstract   bibtex   
Massive Open Online Course (MOOC) systems have recently received significant recognition and are increasingly attracting the attention of education providers and educational researchers. MOOCs are neither precisely defined nor sufficiently researched in terms of their properties and usage. The large number of students enrolled in these courses can lead to insufficient feedback given to the students. A stream of student posts to courses’ forums makes the problem even more difficult. Students’–MOOCs’ interactions can be exploited using text mining techniques to enhance learning and personalise the learners’ experience. In this paper, the open issues in MOOCs are outlined. Text mining and streaming text mining techniques which can contribute to the success of these systems are reviewed and some open issues in MOOC systems are addressed. Finally, our vision of an intelligent personalised MOOC feedback management system that we term iMOOC is outlined.
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 year = {2014},
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 keywords = {artificial intelligence,data mining,intelligent systems},
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 month = {10},
 publisher = {Taylor & Francis},
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 abstract = {Massive Open Online Course (MOOC) systems have recently received significant recognition and are increasingly attracting the attention of education providers and educational researchers. MOOCs are neither precisely defined nor sufficiently researched in terms of their properties and usage. The large number of students enrolled in these courses can lead to insufficient feedback given to the students. A stream of student posts to courses’ forums makes the problem even more difficult. Students’–MOOCs’ interactions can be exploited using text mining techniques to enhance learning and personalise the learners’ experience. In this paper, the open issues in MOOCs are outlined. Text mining and streaming text mining techniques which can contribute to the success of these systems are reviewed and some open issues in MOOC systems are addressed. Finally, our vision of an intelligent personalised MOOC feedback management system that we term iMOOC is outlined.},
 bibtype = {article},
 author = {Shatnawi, Safwan and Gaber, Mohamad Medhat and Cocea, Mihaela},
 journal = {Systems Science & Control Engineering},
 number = {1}
}

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