度量(数据仓库)
非线性系统
人工神经网络
股票市场
计算机科学
因果关系(物理学)
格兰杰因果关系
特征选择
数据挖掘
人工智能
因果模型
机器学习
计量经济学
结果(博弈论)
数学
统计
数理经济学
古生物学
物理
生物
量子力学
马
作者
Marc-Aurèle Divernois,Jalal Etesami,Damir Filipović,Negar Kiyavash
标识
DOI:10.1109/jsait.2024.3351549
摘要
We develop a data-driven framework to identify the interconnections between firms using an information-theoretic measure. This measure generalizes Granger causality and is capable of detecting nonlinear relationships within a network. Moreover, we develop an algorithm using recurrent neural networks and the aforementioned measure to identify the interconnections of high-dimensional nonlinear systems. The outcome of this algorithm is the causal graph encoding the interconnections among the firms. These causal graphs can be used as preliminary feature selection for another predictive model or for policy design. We evaluate the performance of our algorithm using both synthetic linear and nonlinear experiments and apply it to the daily stock returns of U.S. listed firms and infer their interconnections.
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