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Compound Poisson models for weighted networks with applications in finance

机译:复合泊松模型,用于融资应用的加权网络

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We develop a modelling framework for estimating and predicting weighted network data. The edge weights in weighted networks often arise from aggregating some individual relationships between the nodes. Motivated by this, we introduce a modelling framework for weighted networks based on the compound Poisson distribution. To allow for heterogeneity between the nodes, we use a regression approach for the model parameters. We test the new modelling framework on two types of financial networks: a network of financial institutions in which the edge weights represent exposures from trading Credit Default Swaps and a network of countries in which the edge weights represent cross-border lending. The compound Poisson Gamma distributions with regression fit the data well in both situations. We illustrate how this modelling framework can be used for predicting unobserved edges and their weights in an only partially observed network. This is for example relevant for assessing systemic risk in financial networks.
机译:我们开发用于估计和预测加权网络数据的建模框架。加权网络中的边缘权重经常从聚合节点之间的一些单独关系来实现。由此激励,我们基于复合泊松分布介绍了加权网络的建模框架。要允许节点之间的异质性,我们使用对模型参数的回归方法。我们在两种类型的金融网络上测试新的建模框架:金融机构网络,其中边缘权重代表交易信用违约掉期的曝光以及边缘权重代表跨境贷款的国家网络。回归的复合泊松伽马分布适用于两种情况。我们说明了该建模框架如何用于预测仅部分观察到的网络中的未观察的边缘及其权重。这例如有关评估金融网络中的系统风险。

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