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Synthesis of Stochastic Flow Networks

机译:随机流网​​络的综合

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摘要

A stochastic flow network is a directed graph with incoming edges (inputs) and outgoing edges (outputs), tokens enter through the input edges, travel stochastically in the network, and can exit the network through the output edges. Each node in the network is a splitter, namely, a token can enter a node through an incoming edge and exit on one of the output edges according to a predefined probability distribution. Stochastic flow networks can be easily implemented by beam splitters, or by DNA-based chemical reactions, with promising applications in optical computing, molecular computing and stochastic computing. In this paper, we address a fundamental synthesis question: Given a finite set of possible splitters and an arbitrary rational probability distribution, design a stochastic flow network, such that every token that enters the input edge will exit the outputs with the prescribed probability distribution. The problem of probability transformation dates back to von Neumann’s 1951 work and was followed, among others, by Knuth and Yao in 1976. Most existing works have been focusing on the “simulation” of target distributions. In this paper, we design optimal-sized stochastic flow networks for “synthesizing” target distributions. It shows that when each splitter has two outgoing edges and is unbiased, an arbitrary rational probability ɑ/b with ɑ ≤ b ≤ 2^n can be realized by a stochastic flow network of size n that is optimal. Compared to the other stochastic systems, feedback (cycles in networks) strongly improves the expressibility of stochastic flow networks.
机译:随机流网​​络是有向图,具有进入边缘(输入)和流出边缘(输出),令牌通过输入边缘进入,在网络中随机传播,并可以通过输出边缘离开网络。网络中的每个节点都是拆分器,即令牌可以根据预定义的概率分布通过输入边缘进入节点并在输出边缘之一上退出。随机流网​​络可以通过分束器或基于DNA的化学反应轻松实现,在光学计算,分子计算和随机计算中具有广阔的应用前景。在本文中,我们解决了一个基本的综合问题:给定有限的可能分裂器和任意合理的概率分布,设计一个随机流网络,以使进入输入边缘的每个令牌都将以规定的概率分布退出输出。概率转换的问题可以追溯到冯·诺伊曼(von Neumann)于1951年的工作,克努斯(Knuth)和姚(Yao)在1976年的研究中也紧随其后。大多数现有工作都集中在“模拟”目标分布上。在本文中,我们为“综合”目标分布设计了最佳大小的随机流网络。它表明,当每个分离器有两个输出边缘且无偏时,可以通过最佳大小为n的随机流动网络来实现with≤b≤2 ^ n的任意有理概率ɑ/ b。与其他随机系统相比,反馈(网络中的循环)极大地提高了随机流网络的可表达性。

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