Preference-Based Batch and Sequential Teaching: Towards a Unified View of Models
October 24, 2019 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Farnam Mansouri, Yuxin Chen, Ara Vartanian, Xiaojin Zhu, Adish Singla
arXiv ID
1910.10944
Category
cs.LG: Machine Learning
Cross-listed
stat.ML
Citations
34
Venue
Neural Information Processing Systems
Last Checked
3 months ago
Abstract
Algorithmic machine teaching studies the interaction between a teacher and a learner where the teacher selects labeled examples aiming at teaching a target hypothesis. In a quest to lower teaching complexity and to achieve more natural teacher-learner interactions, several teaching models and complexity measures have been proposed for both the batch settings (e.g., worst-case, recursive, preference-based, and non-clashing models) as well as the sequential settings (e.g., local preference-based model). To better understand the connections between these different batch and sequential models, we develop a novel framework which captures the teaching process via preference functions $ฮฃ$. In our framework, each function $ฯ\in ฮฃ$ induces a teacher-learner pair with teaching complexity as $\TD(ฯ)$. We show that the above-mentioned teaching models are equivalent to specific types/families of preference functions in our framework. This equivalence, in turn, allows us to study the differences between two important teaching models, namely $ฯ$ functions inducing the strongest batch (i.e., non-clashing) model and $ฯ$ functions inducing a weak sequential (i.e., local preference-based) model. Finally, we identify preference functions inducing a novel family of sequential models with teaching complexity linear in the VC dimension of the hypothesis class: this is in contrast to the best known complexity result for the batch models which is quadratic in the VC dimension.
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