Intelligent Tutoring Systems and Education
Software
I am using my research on optimal teaching,
active learning, artificial curiosity and a general perspective
on social learning to develop Intelligent Tutoring Systems
different pedagogical problems. This engine adaptively
personalizes sequences of learning activities to maximize
skills acquired for each individual student, taking into
account limited time and motivational resources. At a given
point in time, the system tries to propose to the student the
activity which makes him progress best, hence the name of the
approach: the “Right Activity at the Right Time”
(RiARiT).
The system is based on the combination of three approaches.
First, it leverages recent models of intrinsically motivated
learning by transposing them to active teaching, relying of
empirical estimation of learning progress provided by specific
activities to particular students. Second, it uses
state-of-the-art Multi-Arm Bandit (MAB) techniques to
efficiently manage the exploration/exploitation challenge of
this optimization process. Third, it leverages expert knowledge
to constrain and bootstrap initial exploration of the MAB,
while requiring only coarse guidance information of the expert
and allowing the system to deal with didactic gaps in its
knowledge. We have already evaluated the algorithm in user
studies at several schools of Bordeaux (approximately 150
students from CE1).
Relevant Publications:
Multi-Armed Bandits for Intelligent Tutoring Systems, Manuel Lopes, Benjamin Clement, Didier Roy,
Pierre-Yves Oudeyer. arXiv:1310.3174
[cs.AI], 2013. (pdf)
The Strategic Student Approach for Life-Long Exploration and
Learning, Manuel Lopes and Pierre-Yves
Oudeyer. IEEE - International
Conference on Development and Learning (ICDL), 2012. (pdf)
Algorithmic and Human Teaching of
Sequential Decision Tasks, Maya
Cakmak and Manuel Lopes. AAAI
Conference on Artificial Intelligence (AAAI), Toronto,
Canada, 2012. (pdf)
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