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Systemic Risk Analysis on Reconstructed Economic and Financial Networks

机译:重构经济金融网络的系统风险分析

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摘要

We address a fundamental problem that is systematically encountered when modeling real-world complex systems of societal relevance: the limitedness of the information available. In the case of economic and financial networks, privacy issues severely limit the information that can be accessed and, as a consequence, the possibility of correctly estimating the resilience of these systems to events such as financial shocks, crises and cascade failures. Here we present an innovative method to reconstruct the structure of such partially-accessible systems, based on the knowledge of intrinsic node-specific properties and of the number of connections of only a limited subset of nodes. This information is used to calibrate an inference procedure based on fundamental concepts derived from statistical physics, which allows to generate ensembles of directed weighted networks intended to represent the real system—so that the real network properties can be estimated as their average values within the ensemble. We test the method both on synthetic and empirical networks, focusing on the properties that are commonly used to measure systemic risk. Indeed, the method shows a remarkable robustness with respect to the limitedness of the information available, thus representing a valuable tool for gaining insights on privacy-protected economic and financial systems.
机译:我们在对现实社会相关的复杂系统进行建模时,系统地解决了一个基本问题:可用信息的局限性。在经济和金融网络的情况下,隐私问题严​​重限制了可访问的信息,因此,可能会正确估计这些系统对诸如金融冲击,危机和级联故障之类的事件的恢复能力。在这里,我们基于固有的特定于节点的属性以及仅有限的节点子集的连接数的知识,提出了一种重构这种部分可访问系统的结构的创新方法。该信息用于基于统计物理学衍生的基本概念来校准推理过程,从而可以生成旨在表示真实系统的有向加权网络的集合,以便可以将真实网络的属性估计为集合内的平均值。我们在综合和经验网络上测试该方法,重点是通常用于衡量系统风险的属性。实际上,相对于可用信息的局限性,该方法表现出了显着的鲁棒性,因此代表了一种获得有关受隐私保护的经济和金融系统的见解的有价值的工具。

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