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首页> 外文期刊>IEEE Transactions on Signal Processing >Distributed Inference Over Directed Networks: Performance Limits and Optimal Design
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Distributed Inference Over Directed Networks: Performance Limits and Optimal Design

机译:定向网络上的分布式推理:性能限制和最佳设计

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We find large deviations rates for consensus-based distributed inference for directed networks. When the topology is deterministic, we establish the large deviations principle and find exactly the corresponding rate function, equal at all nodes. We show that the dependence of the rate function on the stochastic weight matrix associated with the network is fully captured by its left eigenvector corresponding to the unit eigenvalue. Further, when the sensors’ observations are Gaussian, the rate function admits a closed-form expression. Motivated by these observations, we formulate the optimal network design problem of finding the left eigenvector that achieves the highest value of the rate function, for a given target accuracy. This eigenvector therefore minimizes the time that the inference algorithm needs to reach the desired accuracy. For Gaussian observations, we show that the network design problem can be formulated as a semidefinite (convex) program, and hence can be solved efficiently. When observations are identically distributed across agents, the system exhibits an interesting property: the graph of the rate function always lies between the graphs of the rate function of an isolated node and the rate function of a fusion center that has access to all observations. We prove that this fundamental property holds even when the topology and the associated system matrices change randomly over time, with arbitrary distribution. Due to the generality of its assumptions, the latter result requires more subtle techniques than the standard large deviations tools, contributing to the general theory of large deviations.
机译:我们发现定向网络的基于共识的分布式推理存在较大的偏差率。当拓扑是确定性的时,我们建立大偏差原理并找到在所有节点上均相等的对应速率函数。我们表明,速率函数对与网络关联的随机权重矩阵的依赖性已通过其对应于单位特征值的左特征向量完全捕获。此外,当传感器的观测结果为高斯分布时,比率函数会接受闭合形式的表达式。根据这些观察结果,对于给定的目标精度,我们制定了最优网络设计问题,即寻找达到速率函数最大值的左特征向量。因此,该特征向量使推理算法达到所需精度所需的时间最小化。对于高斯观测,我们表明网络设计问题可以表示为半定(凸)程序,因此可以有效解决。当观察值在代理之间的分布相同时,系统会表现出有趣的性质:速率函数的图始终位于孤立节点的速率函数的图和可访问所有观察值的融合中心的速率函​​数的图之间。我们证明,即使拓扑和关联的系统矩阵随时间随时间随机变化且具有任意分布,该基本属性仍然成立。由于其假设的一般性,后一种结果比标准的大偏差工具需要更多的微妙技术,这有助于大偏差的一般理论。

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