Published December 2019 | Version Published + Supplemental Material + Submitted
Book Section - Chapter Open

Teaching Multiple Concepts to Forgetful Learners

Abstract

How can we help a forgetful learner learn multiple concepts within a limited time frame? While there have been extensive studies in designing optimal schedules for teaching a single concept given a learner's memory model, existing approaches for teaching multiple concepts are typically based on heuristic scheduling techniques without theoretical guarantees. In this paper, we look at the problem from the perspective of discrete optimization and introduce a novel algorithmic framework for teaching multiple concepts with strong performance guarantees. Our framework is both generic, allowing the design of teaching schedules for different memory models, and also interactive, allowing the teacher to adapt the schedule to the underlying forgetting mechanisms of the learner. Furthermore, for a well-known memory model, we are able to identify a regime of model parameters where our framework is guaranteed to achieve high performance. We perform extensive evaluations using simulations along with real user studies in two concrete applications: (i) an educational app for online vocabulary teaching; and (ii) an app for teaching novices how to recognize animal species from images. Our results demonstrate the effectiveness of our algorithm compared to popular heuristic approaches.

Additional Information

© 2020 Neural Information Processing Systems Foundation, Inc. This work was done when Yuxin Chen and Oisin Mac Aodha were at Caltech. This work was supported in part by NSF Award #1645832, Northrop Grumman, Bloomberg, AWS Research Credits, Google as part of the Visipedia project, and a Swiss NSF Early Mobility Postdoctoral Fellowship.

Attached Files

Published - 8659-teaching-multiple-concepts-to-a-forgetful-learner.pdf

Submitted - 1805.08322.pdf

Supplemental Material - 8659-teaching-multiple-concepts-to-a-forgetful-learner-supplemental.zip

Files

1805.08322.pdf

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Additional details

Identifiers

Eprint ID
87072
Resolver ID
CaltechAUTHORS:20180613-133348044

Related works

Funding

NSF
CNS-1645832
Northrop Grumman Corporation
Bloomberg
Amazon Web Services
Google
Swiss National Science Foundation (SNSF)

Dates

Created
2018-06-13
Created from EPrint's datestamp field
Updated
2023-06-02
Created from EPrint's last_modified field