Predicting Influential Higher-Order Patterns in Temporal Network Data

Christoph Gote, Vincenzo Perri, Ingo Scholtes
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引用次数: 2

Abstract

Networks are frequently used to model complex systems comprised of interacting elements. While edges capture the topology of direct interactions, the true complexity of many systems originates from higher-order patterns in paths by which nodes can indirectly influence each other. Path data, representing ordered sequences of consecutive direct interactions, can be used to model these patterns. On the one hand, to avoid overfitting, such models should only consider those higher-order patterns for which the data provide sufficient statistical evidence. On the other hand, we hypothesise that network models, which capture only direct interactions, underfit higher-order patterns present in data. Consequently, both approaches are likely to misidentify influential nodes in complex networks. We contribute to this issue by proposing five centrality measures based on MOGen, a multi-order generative model that accounts for all indirect influences up to a maximum distance but disregards influences at higher distances. We compare MOGen-based centralities to equivalent measures for network models and path data in a prediction experiment where we aim to identify influential nodes in out-of-sample data. Our results show strong evidence supporting our hypothesis. MOGen consistently outperforms both the network model and path-based prediction. We further show that the performance difference between MOGen and the path-based approach disappears if we have sufficient observations, confirming that the error is due to overfitting.
预测影响时间网络数据的高阶模式
网络经常被用来模拟由相互作用的元素组成的复杂系统。虽然边捕获了直接交互的拓扑结构,但许多系统的真正复杂性源于路径中的高阶模式,节点可以通过这些模式间接地相互影响。路径数据表示连续直接交互的有序序列,可用于对这些模式进行建模。一方面,为了避免过拟合,这些模型应该只考虑那些数据提供足够统计证据的高阶模式。另一方面,我们假设只捕获直接交互的网络模型不适合数据中存在的高阶模式。因此,这两种方法都可能错误地识别复杂网络中的有影响的节点。针对这一问题,我们提出了基于MOGen的五种中心性度量,MOGen是一种多阶生成模型,考虑了最大距离内的所有间接影响,但忽略了更高距离上的影响。在预测实验中,我们将基于mogen的中心性与网络模型和路径数据的等效度量进行了比较,目的是识别样本外数据中的影响节点。我们的研究结果提供了强有力的证据来支持我们的假设。MOGen始终优于网络模型和基于路径的预测。我们进一步表明,如果我们有足够的观察值,MOGen和基于路径的方法之间的性能差异就会消失,这证实了误差是由于过拟合造成的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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