Journal article

Relational event models for social learning in MOOCs

D Vu, P Pattison, G Robins

Social Networks | Published : 2015

Abstract

We propose three extensions for the relational event framework to model the co-evolution of multiple network event streams which are increasingly available thanks to the explosive growth of online applications. Firstly, a flexible stratification approach is considered to allow for more complex data structures with many types of nodes and events. Secondly, an inference method that combines nested case-control sampling with stratification is discussed to scale the approach to very large data sets. Finally, a suite of new temporal and network statistics is introduced to reflect the potentially complex dependencies among events and observed heterogeneities on nodes and edges.The empirical value ..

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University of Melbourne Researchers

Grants

Awarded by Australian Research Council


Funding Acknowledgements

The authors would like to thank members of Learning Analytics Research Group in University of Melbourne for their helpful comments during the early phase of our study. This research is funded by Australian Research Council Discovery Project DP120102902.