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The Sample Complexity of Smooth Boosting and the Tightness of the Hardcore Theorem

2024-09-17Unverified0· sign in to hype

Guy Blanc, Alexandre Hayderi, Caleb Koch, Li-Yang Tan

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Abstract

Smooth boosters generate distributions that do not place too much weight on any given example. Originally introduced for their noise-tolerant properties, such boosters have also found applications in differential privacy, reproducibility, and quantum learning theory. We study and settle the sample complexity of smooth boosting: we exhibit a class that can be weak learned to -advantage over smooth distributions with m samples, for which strong learning over the uniform distribution requires (1/^2) m samples. This matches the overhead of existing smooth boosters and provides the first separation from the setting of distribution-independent boosting, for which the corresponding overhead is O(1/). Our work also sheds new light on Impagliazzo's hardcore theorem from complexity theory, all known proofs of which can be cast in the framework of smooth boosting. For a function f that is mildly hard against size-s circuits, the hardcore theorem provides a set of inputs on which f is extremely hard against size-s' circuits. A downside of this important result is the loss in circuit size, i.e. that s' s. Answering a question of Trevisan, we show that this size loss is necessary and in fact, the parameters achieved by known proofs are the best possible.

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