A Size-Free CLT for Poisson Multinomials and its Applications
Constantinos Daskalakis, Anindya De, Gautam Kamath, Christos Tzamos

TL;DR
This paper proves a size-free central limit theorem for Poisson multinomials, enabling better approximation, learning, and game-theoretic algorithms by removing dependence on the number of summands.
Contribution
It introduces a size-free CLT for Poisson multinomials, improving approximation accuracy, constructing optimal covers, and enabling efficient learning algorithms.
Findings
Size-free CLT with poly(k/σ) closeness in total variation
Efficient PTAS for approximate Nash equilibria in anonymous games
Sample-efficient learning algorithm for PMDs with polynomial runtime
Abstract
An -Poisson Multinomial Distribution (PMD) is the distribution of the sum of independent random vectors supported on the set of standard basis vectors in . We show that any -PMD is -close in total variation distance to the (appropriately discretized) multi-dimensional Gaussian with the same first two moments, removing the dependence on from the Central Limit Theorem of Valiant and Valiant. Interestingly, our CLT is obtained by bootstrapping the Valiant-Valiant CLT itself through the structural characterization of PMDs shown in recent work by Daskalakis, Kamath, and Tzamos. In turn, our stronger CLT can be leveraged to obtain an efficient PTAS for approximate Nash equilibria in anonymous games, significantly improving the state of the art, and matching qualitatively the running…
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