Distributional PAC-Learning from Nisan's Natural Proofs
Ari Karchmer

TL;DR
This paper extends the connection between natural proofs and PAC-learning from uniform distributions to arbitrary distributions, introducing a new distributional PAC model and deriving implications for circuit classes and cryptographic assumptions.
Contribution
It generalizes the link between natural proofs and PAC-learning to a new distributional setting, with applications to depth-2 majority circuits and cryptography.
Findings
Natural proofs imply distributional PAC-learning algorithms.
Counterexamples show limitations of the implication under certain assumptions.
New algorithms for learning specific circuit classes and cryptographic nonexistence results.
Abstract
Carmosino et al. (2016) demonstrated that natural proofs of circuit lower bounds for imply efficient algorithms for learning -circuits, but only over \textit{the uniform distribution}, with \textit{membership queries}, and provided . We consider whether this implication can be generalized to , and to learning algorithms which use only random examples and learn over arbitrary example distributions (Valiant's PAC-learning model). We first observe that, if, for any circuit class , there is an implication from natural proofs for to PAC-learning for , then standard assumptions from lattice-based cryptography do not hold. In particular, we observe that depth-2 majority circuits are a (conditional) counter example to the implication, since Nisan (1993) gave a natural proof, but Klivans…
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