More about HKUST
The Challenges of Model Transfer in MOOC Data Science
Speaker: Dr. Una-May O'Reilly Principal Research Scientist AnyScale Learning For All (ALFA) Group MIT Computer Science and Artificial Intelligence Laboratory MIT Title: "The Challenges of Model Transfer in MOOC Data Science" Date: Monday, 14 November 2016 Time: 4:00pm - 5:00pm Venue: Lecture Theater F (near lifts 25/26), HKUST Abstract: A wealth of detailed observations can be collected by an online learning platform (such as edX or Coursera) as learners use it. This data, when transformed into knowledge in the form of models through Machine Learning, can inform better teaching practices and shed new light on how learning occurs. However, while data from a course that is analyzed after the course has been taught can yield behavioral models (e.g. stopout) that are helpful retrospectively, it is not straightforward to develop models that can be transferred and applied to a new course with different students and content. We will discuss the technicalities of the challenges in transferring models and introduce an ensemble modeling approach due to Sebastien Dubois and Kalyan Veeramachaneni, members of the ALFA group, that facilitates robust model transfer. ******************* Biography: Una-May O'Reilly is leader of the AnyScale Learning For All (ALFA) group at Massachusetts Institute of Technology Computer Science and Artificial Intelligence Laboratory. ALFA focuses on scalable machine learning, evolutionary algorithms, and frameworks for knowledge mining, prediction and analytics. The group has projects in clinical medicine knowledge discovery, cyber security and MOOC technology. She received the EvoStar Award for Outstanding Achievements in Evolutionary Computation in Europe in 2013, became a ISGEC fellow in 2002 and is Vice-Chair of ACM SIGEVO.