Is Transductive Learning Equivalent to PAC Learning?
Shaddin Dughmi, Yusuf Kalayci, Grayson York

TL;DR
This paper investigates the relationship between transductive and PAC learning models, showing their equivalence in realizable cases and near-equivalence in agnostic binary classification, with implications for understanding their fundamental connections.
Contribution
It establishes that PAC and transductive learning are essentially equivalent for agnostic binary classification, extending existing reductions and providing new theoretical insights.
Findings
For realizable learning, models are essentially equivalent.
PAC reduces to transductive learning with low-order error terms.
Transductive learning is no harder than PAC in agnostic binary classification.
Abstract
Much of learning theory is concerned with the design and analysis of probably approximately correct (PAC) learners. The closely related transductive model of learning has recently seen more scrutiny, with its learners often used as precursors to PAC learners. Our goal in this work is to understand and quantify the exact relationship between these two models. First, we observe that modest extensions of existing results show the models to be essentially equivalent for realizable learning for most natural loss functions, up to low order terms in the error and sample complexity. The situation for agnostic learning appears less straightforward, with sample complexities potentially separated by a factor. This is therefore where our main contributions lie. Our results are two-fold: 1. For agnostic learning with bounded losses (including, for example, multiclass…
Peer Reviews
Decision·ALT 2025
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Taxonomy
TopicsNeural Networks and Applications
