LGAICCITJun 29, 2021

Conditional Teaching Size

arXiv:2107.07038v1
Originality Incremental advance
AI Analysis

This work addresses curriculum design for machine teaching in compositional scenarios, offering theoretical insights but is incremental as it builds on existing teaching size concepts.

The paper tackles the problem of teaching concepts in a compositional setting, where prior knowledge can affect teaching difficulty, and introduces conditional teaching size to analyze optimal curricula, uncovering the interposition phenomenon where certain prior knowledge increases teaching size.

Recent research in machine teaching has explored the instruction of any concept expressed in a universal language. In this compositional context, new experimental results have shown that there exist data teaching sets surprisingly shorter than the concept description itself. However, there exists a bound for those remarkable experimental findings through teaching size and concept complexity that we further explore here. As concepts are rarely taught in isolation we investigate the best configuration of concepts to teach a given set of concepts, where those that have been acquired first can be reused for the description of new ones. This new notion of conditional teaching size uncovers new insights, such as the interposition phenomenon: certain prior knowledge generates simpler compatible concepts that increase the teaching size of the concept that we want to teach. This does not happen for conditional Kolmogorov complexity. Furthermore, we provide an algorithm that constructs optimal curricula based on interposition avoidance. This paper presents a series of theoretical results, including their proofs, and some directions for future work. New research possibilities in curriculum teaching in compositional scenarios are now wide open to exploration.

Foundations

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