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Functional Topology Inference from Network Events

机译:网络事件的功能拓扑推断

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In this paper we present a novel approach for inferring functional connectivity within a large-scale network from time series of emitted node events. We do so under the following constraints: (a) non-stationarity of the underlying connectivity, (b) sparsity of the time-series of events, and (c) absence of an explicit model describing how events propagate through the network. We develop an inference method whose output is an undirected weighted network, where the weight of an edge between two nodes denotes the probability of these nodes being functionally connected. Two nodes are assumed to be functionally connected if they show significantly more coincident or short-lagged events than randomly picked pairs of nodes with similar levels of activity. We develop a model of time-varying connectivity whose parameters are determined by maximising the model's predictive power from one time window to the next. We assess the accuracy, efficiency and scalability of our method on a real dataset of network events spanning multiple months.
机译:在本文中,我们提出了一种新颖的方法,可以根据发出的节点事件的时间序列来推断大型网络中的功能连接。我们这样做受到以下约束:(a)基础连接性的非平稳性;(b)事件的时间序列的稀疏性;(c)缺少描述事件如何通过网络传播的明确模型。我们开发了一种推理方法,其输出是无向加权网络,其中两个节点之间的边的权重表示这些节点功能连接的可能性。如果两个节点显示出比具有相似活动水平的节点的随机选择对显着更多的重合或短时滞事件,则假定两个节点在功能上已连接。我们开发了一个时变连接模型,其参数是通过最大化模型从一个时间窗到下一个时间窗的预测能力来确定的。我们在跨越多个月的真实网络事件数据集上评估我们方法的准确性,效率和可扩展性。

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