filename : Kae16a.pdf entry : article conference : Sixth International Conference on Learning Analytics \& Knowledge, Edinburgh, United Kingdom pages : 289-298 year : 2016 month : April title : When to Stop?: Towards Universal Instructional Policies subtitle : author : Tanja K\"aser, Severing Klingler, and Markus Gross booktitle : Proceedings of Learning Analytics \& Knowledge ISSN/ISBN : editor : publisher : ACM publ.place : New York, NY, USA volume : issue : language : English keywords : individualization, instructional policies, noisy data, student modeling, wheel-spinning abstract : The adaptivity of intelligent tutoring systems relies on the accuracy of the student model and the design of the instructional policy. Recently an instructional policy has been presented that is compatible with all common student models. In this work we present the next step towards a universal instructional policy. We introduce a new policy that is applicable to an even wider range of student models including DBNs modeling skill topologies and forgetting. We theoretically and empirically compare our policy to previous policies. Using synthetic and real world data sets we show that our policy can effectively handle wheel-spinning students as well as forgetting across a wide range of student models.