On the Advantage of Adaptivity for Sampling with Cell Probes
Abstract
We construct an explicit distribution D over \0,1\N that exhibits an essentially optimal separation between adaptive and non-adaptive cell-probe sampling. The distribution can be sampled exactly when each output bit is allowed two adaptive probes to an arbitrarily long sequence of independent uniform symbols from [N]. In contrast, any non-adaptive sampler requires Ω(N) non-adaptive cell probes to generate a distribution with total variation distance less than 1-o(1) from D. This provides a 2-vs-Ω(N) separation for sampling with adaptive versus non-adaptive cell probes, improving upon the 2-vs-Ω( N) separation of Yu and Zhan (ITCS '24) and the ( N)O(1)-vs-NΩ(1) separation of Alekseev, Göös, Myasnikov, Riazanov, and Sokolov (STOC '26).
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