Black-box Generalization of Machine Teaching
Xiaofeng Cao, Yaming Guo, Ivor W. Tsang, James T. Kwok

TL;DR
This paper introduces a black-box teaching hypothesis to improve active learning by providing guidance, resulting in tighter generalization error bounds and reduced label complexity, verified through experiments showing superior performance.
Contribution
The paper proposes a novel black-box teaching hypothesis with a tighter slack term, improving convergence and generalization bounds in active learning.
Findings
Tighter generalization error bounds with teaching hypothesis.
Reduced label complexity compared to non-educated learners.
Experimental results outperform standard active learning strategies.
Abstract
Hypothesis-pruning maximizes the hypothesis updates for active learning to find those desired unlabeled data. An inherent assumption is that this learning manner can derive those updates into the optimal hypothesis. However, its convergence may not be guaranteed well if those incremental updates are negative and disordered. In this paper, we introduce a black-box teaching hypothesis employing a tighter slack term to replace the typical for pruning. Theoretically, we prove that, under the guidance of this teaching hypothesis, the learner can converge into a tighter generalization error and label complexity bound than those non-educated learners who do not receive any guidance from a teacher:1) the generalization error upper bound can be reduced from to approximately…
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Taxonomy
TopicsMachine Learning and Algorithms · Machine Learning and Data Classification · Educational Assessment and Pedagogy
