Noisy Computing of the and Functions

We consider the problem of computing a function of variables using noisy queries, where each query is incorrect with some fixed and known probability . Specifically, we consider the computation of the function of bits (where queries correspond to noisy readings of the bits) and the function of real numbers (where queries correspond to noisy pairwise comparisons). We show that an expected number of queries of \[ (1 \pm o(1)) \frac{n\log \frac{1}{\delta}}{D_{\mathsf{KL}}(p \| 1-p)} \] is both sufficient and necessary to compute both functions with a vanishing error probability , where denotes the Kullback-Leibler divergence between and distributions. Compared to previous work, our results tighten the dependence on in both the upper and lower bounds for the two functions.
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