Optimal lower bounds for Quantum Learning via Information Theory
Shima Bab Hadiashar, Ashwin Nayak, Pulkit Sinha

TL;DR
This paper establishes optimal lower bounds for quantum sample complexity in PAC and agnostic learning models using an information-theoretic approach, and explores the quantum Coupon Collector problem with new bounds and insights.
Contribution
It introduces a simplified information-theoretic method for deriving optimal quantum learning bounds and analyzes the quantum Coupon Collector problem with sharper lower bounds.
Findings
Optimal lower bounds for quantum sample complexity in PAC and agnostic models.
Information-theoretic approach does not always yield the best bounds for the Coupon Collector problem.
New bounds and spectral properties related to the quantum Coupon Collector problem.
Abstract
Although a concept class may be learnt more efficiently using quantum samples as compared with classical samples in certain scenarios, Arunachalam and de Wolf (JMLR, 2018) proved that quantum learners are asymptotically no more efficient than classical ones in the quantum PAC and Agnostic learning models. They established lower bounds on sample complexity via quantum state identification and Fourier analysis. In this paper, we derive optimal lower bounds for quantum sample complexity in both the PAC and agnostic models via an information-theoretic approach. The proofs are arguably simpler, and the same ideas can potentially be used to derive optimal bounds for other problems in quantum learning theory. We then turn to a quantum analogue of the Coupon Collector problem, a classic problem from probability theory also of importance in the study of PAC learning. Arunachalam, Belovs,…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Machine Learning and Algorithms · Quantum Information and Cryptography
