随机网络广播

A. Makur, Elchanan Mossel, Yury Polyanskiy
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引用次数: 6

摘要

研究了树上广播问题在有向无环图(dag)集上的推广。在时刻0,源顶点X沿着二进制对称通道(BSCs)向称为第1层的一组顶点传输一个均匀位。除X外的每个顶点的度为d。当k≥1时,k层的顶点对其接收到的比特应用d输入布尔处理函数,并将结果发送给k + 1层的顶点。我们说,如果我们能够使用任意深度层k上所有顶点的值以错误概率为界从$\frac{1}{2}$重建X,那么广播是可能的。这个问题与可靠计算和存储模型、概率元胞自动机和生物网络中的信息流密切相关。在这项工作中,我们分析了随机构建的dag,并证明只有当BSC噪声水平低于一定的(程度和功能依赖的)临界阈值时,广播才有可能。具体来说,对于每一个d≥3,我们确定了具有大小为Ω(log(k))和大多数处理函数的随机dag的临界阈值。对于d = 2,我们为NAND处理函数建立了类似的结果。此外,当奇数d≥3时,我们证明了如果需要从单个顶点重建,则识别的阈值不能通过其他处理函数来改进。最后,对于任何BSC噪声水平,在深度的拟多项式或随机多对数时间内,我们构建了具有大小为Θ(log(k))的层的确定性有界度dag,允许使用无损扩展图进行重建。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Broadcasting on Random Networks
We study a generalization of the problem of broadcasting on trees to the setting of directed acyclic graphs (DAGs). At time 0, a source vertex X transmits a uniform bit along binary symmetric channels (BSCs) to a set of vertices called layer 1. Each vertex except X has indegree d. At time k ≥ 1, vertices at layer k apply d-input Boolean processing functions to their received bits and send out the results to vertices at layer k + 1. We say that broadcasting is possible if we can reconstruct X with probability of error bounded away from $\frac{1}{2}$ using the values of all vertices at an arbitrarily deep layer k. This question is closely related to models of reliable computation and storage, probabilistic cellular automata, and information flow in biological networks.In this work, we analyze randomly constructed DAGs and demonstrate that broadcasting is only possible if the BSC noise level is below a certain (degree and function dependent) critical threshold. Specifically, for every d ≥ 3, we identify the critical threshold for random DAGs with layers of size Ω(log(k)) and majority processing functions. For d = 2, we establish a similar result for the NAND processing function. Furthermore, for odd d ≥ 3, we prove that the identified thresholds cannot be improved by other processing functions if reconstruction is required from a single vertex. Finally, for any BSC noise level, in quasi-polynomial or randomized polylogarithmic time in the depth, we construct deterministic bounded degree DAGs with layers of size Θ(log(k)) that admit reconstruction using lossless expander graphs.
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