Nowaczyk Nikolai, O'Halloran Sharyn
Independent Researcher, London, United Kingdom.
Columbia SIPA and Political Science, Columbia University, New York, NY, United States.
Front Artif Intell. 2024 Feb 21;7:1138611. doi: 10.3389/frai.2024.1138611. eCollection 2024.
The paper uses a graph model to examine the effects of financial market regulations on systemic risk. Focusing on central clearing, we model the financial system as a multigraph of trade and risk relations among banks. We then study the impact of central clearing by estimates in the model, stylized case studies, and a simulation case study. These case studies identify the drivers of regulatory policies on risk reduction at the firm and systemic levels. The analysis shows that the effect of central clearing on systemic risk is ambiguous, with potential positive and negative outcomes, depending on the credit quality of the clearing house, netting benefits and losses, and concentration risks. These computational findings align with empirical studies, yet do not require intensive collection of proprietary data. In addition, our approach enables us to disentangle various competing effects. The approach thus provides policymakers and market practitioners with tools to study the impact of a regulation at each level, enabling decision-makers to anticipate and evaluate the potential impact of regulatory interventions in various scenarios before their implementation.
本文使用图模型来研究金融市场监管对系统性风险的影响。聚焦中央清算,我们将金融系统建模为银行间交易和风险关系的多重图。然后,我们通过模型估计、典型案例研究和模拟案例研究来考察中央清算的影响。这些案例研究确定了公司层面和系统层面降低风险的监管政策驱动因素。分析表明,中央清算对系统性风险的影响是模糊的,可能产生积极和消极的结果,这取决于清算所的信用质量、净额结算收益与损失以及集中风险。这些计算结果与实证研究一致,但不需要大量收集专有数据。此外,我们的方法使我们能够理清各种相互竞争的影响。因此,该方法为政策制定者和市场从业者提供了在各个层面研究监管影响的工具,使决策者能够在监管干预实施之前,预测和评估其在各种情景下的潜在影响。