基于泊松自回归模型的网络估计

B. Mark, Garvesh Raskutti, R. Willett
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引用次数: 4

摘要

多元泊松自回归模型是捕获自激点过程的常用方法,其中来自网络节点的级联事件系列刺激或抑制来自其他节点的事件。这些模型可以用来学习社会或生物神经网络的结构。与这些多变量网络模型相关的一个重要问题是确定不同节点如何相互影响。这个问题提出了许多技术挑战,因为相对于观察到的事件的数量,节点的数量通常很大。本文解决了这些挑战,并提供了一类多元自激泊松自回归模型的学习率。重要的是,当我们的网络是稀疏的时候,导出的学习率适用于高维设置。我们还提供了一个真实的数据示例来支持我们的方法和主要结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Network estimation via poisson autoregressive models
Multivariate Poisson autoregressive models are a common way of capturing self-exciting point processes, where cascading series of events from nodes in a network either stimulate or inhibit events from other nodes. These models can be used to learn the structure of social or biological neural networks. An important problem associated with these multivariate network models is determining how different nodes influence each other. This problem presents a number of technical challenges since the number of nodes is typically large relative to the number of observed events. This paper addresses these challenges and provides learning rates for a class of multivariate self-exciting Poisson autoregressive models. Importantly, the derived learning rates apply in the high-dimensional setting when our network is sparse. We also provide a real data example to support our methodology and main results.
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