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Iterative Teaching by Label Synthesis (2110.14432v5)
Published 27 Oct 2021 in cs.LG, cs.AI, and cs.CV
Abstract: In this paper, we consider the problem of iterative machine teaching, where a teacher provides examples sequentially based on the current iterative learner. In contrast to previous methods that have to scan over the entire pool and select teaching examples from it in each iteration, we propose a label synthesis teaching framework where the teacher randomly selects input teaching examples (e.g., images) and then synthesizes suitable outputs (e.g., labels) for them. We show that this framework can avoid costly example selection while still provably achieving exponential teachability. We propose multiple novel teaching algorithms in this framework. Finally, we empirically demonstrate the value of our framework.
- Weiyang Liu (83 papers)
- Zhen Liu (234 papers)
- Hanchen Wang (49 papers)
- Liam Paull (47 papers)
- Bernhard Schölkopf (412 papers)
- Adrian Weller (150 papers)