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On relating one-way classical and quantum communication complexities (2107.11623v5)

Published 24 Jul 2021 in cs.CC and quant-ph

Abstract: Communication complexity is the amount of communication needed to compute a function when the function inputs are distributed over multiple parties. In its simplest form, one-way communication complexity, Alice and Bob compute a function $f(x,y)$, where $x$ is given to Alice and $y$ is given to Bob, and only one message from Alice to Bob is allowed. A fundamental question in quantum information is the relationship between one-way quantum and classical communication complexities, i.e., how much shorter the message can be if Alice is sending a quantum state instead of bit strings? We make some progress towards this question with the following results. Let $f: \mathcal{X} \times \mathcal{Y} \rightarrow \mathcal{Z} \cup {\bot}$ be a partial function and $\mu$ be a distribution with support contained in $f{-1}(\mathcal{Z})$. Denote $d=|\mathcal{Z}|$. Let $\mathsf{R}{1,\mu}_\epsilon(f)$ be the classical one-way communication complexity of $f$; $\mathsf{Q}{1,\mu}_\epsilon(f)$ be the quantum one-way communication complexity of $f$ and $\mathsf{Q}{1,\mu, *}\epsilon(f)$ be the entanglement-assisted quantum one-way communication complexity of $f$, each with distributional error (average error over $\mu$) at most $\epsilon$. We show: 1) If $\mu$ is a product distribution, $\eta > 0$ and $0 \leq \epsilon \leq 1-1/d$, then, $$\mathsf{R}{1,\mu}{2\epsilon -d\epsilon2/(d-1)+ \eta}(f) \leq 2\mathsf{Q}{1,\mu, *}{\epsilon}(f) + O(\log\log (1/\eta))\enspace.$$ 2)If $\mu$ is a non-product distribution and $\mathcal{Z}={ 0,1}$, then $\forall \epsilon, \eta > 0$ such that $\epsilon/\eta + \eta < 0.5$, $$\mathsf{R}{1,\mu}{3\eta}(f) = O(\mathsf{Q}{1,\mu}_{{\epsilon}}(f) \cdot \mathsf{CS}(f)/\eta3)\enspace,$$ where [\mathsf{CS}(f) = \max_{y} \min_{z\in{0,1}} \vert {x~|~f(x,y)=z} \vert \enspace.]

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