Recommendation for MOOC with Learner Neighbors and Learning Series

MOOCs (Massive Open Online Courses) have become increasingly popular in recent years. Learning item recommendation in MOOCs is of great significance, which can help learners select the best contents from the huge overloaded information. However, the recommendation is challenging, since there’s a high percentage of drop-out due to low satisfaction. Not like traditional recommendation task, learner satisfaction plays an important role in course engagement. The lower the satisfaction is, the higher possibility the learner would drop out the course. Aiming at this, we propose a new recommendation model-Recommendation with learner neighbors and learning series, called RLNLS. It takes achievement motivation on satisfaction into account by exploiting and predicting learning features. A new feature model aiming at satisfaction is proposed according to Expectancy-value Theory. More specifically, knowledge distance is presented to prediction of learning features with learner neighbors and learning series. Hawkes process is modified and utilized for learning intensity prediction. The experimental results on real-world data show the effectiveness of the proposed model in recommending courses and reducing drop-out rate by a large margin.

[1]  Jian Zhao,et al.  Flexible Learning with Semantic Visual Exploration and Sequence-Based Recommendation of MOOC Videos , 2018, CHI.

[2]  Youngseok Lee,et al.  An Intelligent Course Recommendation System , 2011, Smart Comput. Rev..

[3]  Xiang Zhao,et al.  Content-Based Top-N Recommendation Using Heterogeneous Relations , 2016, ADC.

[4]  Harjanto Prabowo,et al.  Analyzing MOOC Features for Enhancing Students Learning Satisfaction , 2018 .

[5]  Wei Chen,et al.  ECharts: A declarative framework for rapid construction of web-based visualization , 2018, Vis. Informatics.

[6]  Anuj Sharma,et al.  A Collaborative Filtering Based Approach for Recommending Elective Courses , 2011, ICISTM.

[7]  George Karypis,et al.  Grade Prediction with Course and Student Specific Models , 2016, PAKDD.

[8]  Yuan-Chun Jiang,et al.  Maximizing customer satisfaction through an online recommendation system: A novel associative classification model , 2010, Decis. Support Syst..

[9]  Chris Piech,et al.  Deconstructing disengagement: analyzing learner subpopulations in massive open online courses , 2013, LAK '13.

[10]  Bradley N. Miller,et al.  GroupLens: applying collaborative filtering to Usenet news , 1997, CACM.

[11]  J. Eccles Expectancies, values and academic behaviors , 1983 .

[12]  Robin Burke,et al.  Knowledge-based recommender systems , 2000 .

[13]  George Karypis,et al.  Domain-Aware Grade Prediction and Top-n Course Recommendation , 2016, RecSys.

[14]  David E. Pritchard,et al.  Studying Learning in the Worldwide Classroom Research into edX's First MOOC. , 2013 .

[15]  Philip S. Yu,et al.  PathSim , 2011, Proc. VLDB Endow..

[16]  David W. S. Wong,et al.  An adaptive inverse-distance weighting spatial interpolation technique , 2008, Comput. Geosci..

[17]  Youssef Jdidou,et al.  Using Recommendation Systems in MOOC: An Innovation in Education That Increases the Profitability of Students , 2018 .

[18]  Gediminas Adomavicius,et al.  Toward the next generation of recommender systems: a survey of the state-of-the-art and possible extensions , 2005, IEEE Transactions on Knowledge and Data Engineering.

[19]  Sherif A. Halawa,et al.  Dropout Prediction in MOOCs using Learner Activity Features , 2014 .

[20]  Youssef Jdidou,et al.  RECOMMENDATION SYSTEMS IN MOOCS , 2016 .

[21]  A. Hawkes Spectra of some self-exciting and mutually exciting point processes , 1971 .

[22]  E. S. Gardner EXPONENTIAL SMOOTHING: THE STATE OF THE ART, PART II , 2006 .

[23]  Jenefer Husman,et al.  The role of the future in student motivation , 1999 .

[24]  Gordon I. McCalla,et al.  Smart Recommendation for an Evolving E-Learning System: Architecture and Experiment , 2005 .

[25]  Qiang Yang,et al.  Collaborative Evolution for User Profiling in Recommender Systems , 2016, IJCAI.

[26]  Boi Faltings,et al.  Adaptive Sequential Recommendation Using Context Trees , 2016, IJCAI.

[27]  Enhong Chen,et al.  Cognitive Modelling for Predicting Examinee Performance , 2015, IJCAI.

[28]  Douglas B. Terry,et al.  Using collaborative filtering to weave an information tapestry , 1992, CACM.

[29]  Narimel Bendakir,et al.  Using Association Rules for Course Recommendation , 2006 .

[30]  Jane Sinclair,et al.  Massive open online courses : an adaptive learning framework , 2015 .