Replicable Composition
Kiarash Banihashem, MohammadHossein Bateni, Hossein Esfandiari, Samira Goudarzi, MohammadTaghi Hajiaghayi

Abstract
Replicability requires that algorithmic conclusions remain consistent when rerun on independently drawn data. A central structural question is composition: given problems each admitting a -replicable algorithm with sample complexity , how many samples are needed to solve all jointly while preserving replicability? The naive analysis yields samples, and Bun et al. (STOC'23) observed that reductions through differential privacy give an alternative bound, leaving open whether the optimal scaling is achievable. We resolve this open problem and, more generally, show that problems with sample complexities can be jointly solved with samples while preserving constant replicability. Our approach converts each replicable algorithm into a perfectly generalizing one, composes…
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