Modeling non-linear effects with neural networks in Relational Event Models

IF 2.9 2区 社会学 Q1 ANTHROPOLOGY Social Networks Pub Date : 2024-06-07 DOI:10.1016/j.socnet.2024.05.004
Edoardo Filippi-Mazzola, Ernst C. Wit
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Abstract

Dynamic networks offer an insight of how relational systems evolve. However, modeling these networks efficiently remains a challenge, primarily due to computational constraints, especially as the number of observed events grows. This paper addresses this issue by introducing the Deep Relational Event Additive Model (DREAM) as a solution to the computational challenges presented by modeling non-linear effects in Relational Event Models (REMs). DREAM relies on Neural Additive Models to model non-linear effects, allowing each effect to be captured by an independent neural network. By strategically trading computational complexity for improved memory management and leveraging the computational capabilities of graphic processor units (GPUs), DREAM efficiently captures complex non-linear relationships within data. This approach demonstrates the capability of DREAM in modeling dynamic networks and scaling to larger networks. Comparisons with traditional REM approaches showcase DREAM superior computational efficiency. The model potential is further demonstrated by an examination of the patent citation network, which contains nearly 8 million nodes and 100 million events.

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在关系事件模型中利用神经网络模拟非线性效应
动态网络能让人们深入了解关系系统是如何演变的。然而,对这些网络进行高效建模仍然是一项挑战,主要原因是计算方面的限制,尤其是随着观测事件数量的增加。本文通过引入深度关系事件加法模型(DREAM)来解决这一问题,以此来应对关系事件模型(REM)中非线性效应建模所带来的计算挑战。DREAM 依靠神经加法模型来模拟非线性效应,使每种效应都能由一个独立的神经网络来捕捉。通过战略性地以计算复杂性换取更好的内存管理,并利用图形处理器(GPU)的计算能力,DREAM 能有效捕捉数据中复杂的非线性关系。这种方法展示了 DREAM 对动态网络建模和扩展到更大网络的能力。与传统的 REM 方法相比,DREAM 的计算效率更胜一筹。对包含近 800 万个节点和 1 亿个事件的专利引用网络的研究进一步证明了该模型的潜力。
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来源期刊
Social Networks
Social Networks Multiple-
CiteScore
5.90
自引率
12.90%
发文量
118
期刊介绍: Social Networks is an interdisciplinary and international quarterly. It provides a common forum for representatives of anthropology, sociology, history, social psychology, political science, human geography, biology, economics, communications science and other disciplines who share an interest in the study of the empirical structure of social relations and associations that may be expressed in network form. It publishes both theoretical and substantive papers. Critical reviews of major theoretical or methodological approaches using the notion of networks in the analysis of social behaviour are also included, as are reviews of recent books dealing with social networks and social structure.
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