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      Indicators of Good Student Performance in Moodle Activity Data

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          Abstract

          In this paper we conduct an analysis of Moodle activity data focused on identifying early predictors of good student performance. The analysis shows that three relevant hypotheses are largely supported by the data. These hypotheses are: early submission is a good sign, a high level of activity is predictive of good results and evening activity is even better than daytime activity. We highlight some pathological examples where high levels of activity correlates with bad results.

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          Author and article information

          Journal
          2016-01-12
          Article
          1601.02975
          cea45079-d90e-4eec-9449-8a3dc0d3a965

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Short version
          cs.CY cs.AI

          Applied computer science,Artificial intelligence
          Applied computer science, Artificial intelligence

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