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Coupling without Communication and Drafter-Invariant Speculative Decoding

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arxiv 2408.07978 v4 pith:MYDAHJCR submitted 2024-08-15 cs.DS cs.CLcs.LG

Coupling without Communication and Drafter-Invariant Speculative Decoding

classification cs.DS cs.CLcs.LG
keywords alicecouplingminhashsamplingweightedcommunication-freeemphgumbel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Suppose Alice has a distribution $P$ and Bob has a distribution $Q$. Alice wants to draw a sample $a\sim P$ and Bob a sample $b \sim Q$ such that $a = b$ with as high of probability as possible. It is well-known that, by sampling from an optimal coupling between the distributions, Alice and Bob can achieve $\Pr[a = b] = 1 - D_{TV}(P,Q)$, where $D_{TV}(P,Q)$ is the total variation distance between $P$ and $Q$. What if Alice and Bob must solve this same problem \emph{without communicating at all?} Perhaps surprisingly, with access to public randomness, they can still achieve $\Pr[a = b] \geq \frac{1 - D_{TV}(P,Q)}{1 + D_{TV}(P,Q)} \geq 1-2D_{TV}(P,Q)$ using a simple protocol based on the Weighted MinHash algorithm. This bound was shown to be optimal in the worst-case by [Bavarian et al., 2020]. In this work, we revisit the communication-free coupling problem. We provide a simpler proof of the optimality result from [Bavarian et al., 2020]. We show that, while the worst-case success probability of Weighted MinHash cannot be improved, an equally simple protocol based on Gumbel sampling offers a Pareto improvement: for every pair of distributions $P, Q$, Gumbel sampling achieves an equal or higher value of $\Pr[a = b]$ than Weighted MinHash. Importantly, this improvement translates to practice. We demonstrate an application of communication-free coupling to \emph{speculative decoding}, a recent method for accelerating autoregressive large language models [Leviathan, Kalman, Matias, ICML 2023]. We show that communication-free protocols can be used to contruct \emph{\CSD{}} schemes, which have the desirable property that their output is fixed given a fixed random seed, regardless of what drafter is used for speculation. In experiments on a language generation task, Gumbel sampling outperforms Weighted MinHash. Code is available at https://github.com/majid-daliri/DISD.

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  1. Trees from Marginals: Autoregressive drafting with factorized priors

    cs.LG 2026-07 accept novelty 7.0

    Weaver restores conditional dependencies on top-K factorized marginals to build high-acceptance draft trees, plus a fused GDN tree-verify kernel, yielding 4.37× AR speedup and 24.7% over DFlash.