图网络作为交互金融系统关系推断的可学习引擎

Jiayu Pi, Yuan Deng
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引用次数: 0

摘要

尽管金融市场的异质性吸引了学者和从业者的兴趣,但是,人们的注意力几乎完全集中在所有个体都被冷漠对待的网络上,而忽略了所有关于所研究的相互作用的上下文相关或时空特性的额外信息。本文介绍了一种新的基于图网络的可学习关系推理模型,该模型实现了对多层动态系统的实体中心和关系中心表示的推理。结果表明,作为一种可学习的模型,该方法支持对真实和模拟数据的准确预测。
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Graph Networks as Learnable Engines for Relations Inference of Interacting Financial Systems
Although the heterogeneous of financial markets is attracting interest both among scholars and practitioners, however, attention was almost exclusively given to networks in which all individuals were treated indifference, while neglecting all the extra information about the context-related or temporal-spatial properties of the interactions under study. Here introduces a new learnable relation inference model—based on graph networks—which implements an inference for entity- and relation-centric representations of multilayer, dynamical systems. The results show that as a learnable model, the approach supports accurate predictions from real and simulated data.
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