Optimal Quantum Sample Complexity of Learning Algorithms
Srinivasan Arunachalam (CWI), Ronald de Wolf (CWI, U of, Amsterdam)

TL;DR
This paper proves that quantum sample complexity for learning algorithms is essentially the same as classical sample complexity, resolving a question about the advantage of quantum examples in learning theory.
Contribution
It establishes that quantum and classical sample complexities are equal up to constant factors in both PAC and agnostic models, using two different analytical approaches.
Findings
Quantum and classical sample complexities are asymptotically equal.
A simple information-theoretic approach yields classical bounds for quantum settings.
A refined analysis using Pretty Good Measurement removes the logarithmic factor.
Abstract
In learning theory, the VC dimension of a concept class is the most common way to measure its "richness." In the PAC model examples are necessary and sufficient for a learner to output, with probability , a hypothesis that is -close to the target concept . In the related agnostic model, where the samples need not come from a , we know that examples are necessary and sufficient to output an hypothesis whose error is at most worse than the best concept in . Here we analyze quantum sample complexity, where each example is a coherent quantum state. This model was introduced by Bshouty and Jackson, who showed that quantum examples are more powerful than classical…
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Taxonomy
TopicsMachine Learning and Algorithms · Quantum Computing Algorithms and Architecture · Computability, Logic, AI Algorithms
