Pipeline for expediting learning analytics and student support from data in social learning
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An important research problem in learning analytics is to expedite the cycle of data leading to the analysis of student progress and the improvement of student support. For this goal in the context of social learning, we propose a pipeline that includes data infrastructure, learning analytics, and intervention, along with computational models for individual components. Next, we describe an example of applying this pipeline to real data in a case study, whose goal is to investigate the positive effects that goal-setting students have on their peers, which suggests ways in which we might foster these social benefits through intervention.
[1] Carolyn Penstein Rosé,et al. Time Series Analysis of Nursing Notes for Mortality Prediction via a State Transition Topic Model , 2015, CIKM.
[2] Carolyn Penstein Rosé,et al. Challenges and Opportunities of Dual-Layer MOOCs: Reflections from an edX Deployment Study , 2015 .
[3] Carolyn Penstein Rosé,et al. Question recommendation with constraints for massive open online courses , 2014, RecSys '14.