使用神经网络分析大型市场数据:因果分析法

Marc-Aurèle Divernois;Jalal Etesami;Damir Filipovic;Negar Kiyavash
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引用次数: 0

摘要

我们建立了一个数据驱动的框架,利用信息论的方法来识别企业之间的相互联系。这种度量方法概括了格兰杰因果关系,能够检测网络中的非线性关系。此外,我们还开发了一种算法,利用递归神经网络和上述措施来识别高维非线性系统的相互联系。该算法的结果是编码企业间相互联系的因果图。这些因果图可以作为另一个预测模型或政策设计的初步特征选择。我们使用合成线性和非线性实验来评估我们算法的性能,并将其应用于美国上市公司的每日股票回报率,推断它们之间的相互联系。
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Analysis of Large Market Data Using Neural Networks: A Causal Approach
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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