流动性紧缩对银行间网络的影响

I. Lucas, N. Schomberg, F. Couturier
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摘要

-大多数实证研究分析的是单个机构面临的流动性风险如何转化为系统性风险。最近的银行危机凸显了把握和控制系统性风险的重要性,以及各国央行为拯救违约或流动性不足的银行而放松货币政策的接受程度。最后一点表明,银行对流动性风险的重视程度会降低,而流动性风险又可能成为新的重要损失渠道。金融监管的重点是全球网络中最重要和“系统性”的银行。然而,为了量化与流动性风险相关的预期损失,有必要分析全球银行网络各要素对这一渠道的敏感性。小银行不被认为是潜在的系统性银行;然而,小银行之间的相互作用可以成为一个系统性因素。本文分析了中小银行互动对作为网络核心的一组银行的影响。该方法在两类环境下采用基于智能体的模型结构。在第一类中,收集了22家大型系统性银行(如法国巴黎银行或巴克莱银行)实际资产负债表的数据。在第二部分中,为了模拟一个尽可能接近实际银行间市场的网络,578家小于一级银行的虚拟银行被分为中小型两组。所有银行都活跃在欧洲银行间网络上,并有存款和市场活动。预估有12个三个月的模拟期,代表三年的中期时间间隔。在每个时期,都有一组行为描述:到期贷款的偿还、存款的清算、证券的收入、新存款的收集、新的信贷需求和证券的出售。最后两个动作是本文开发的退款流程的一部分。为了提高模型的可靠性,随机参数动力学用随机方程作为速率进行管理,随机方程的变化由Vasicek模型生成。中央银行被认为是最后贷款人,允许银行以回购利率借款,并介绍了银行退出该系统的一些条件。结果表明,三组欧洲银行间网络的反应并不相同,中间银行对流动性风险最敏感。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of Liquidity Crunch on Interbank Network
— Most empirical studies have analyzed how liquidity risks faced by individual institutions turn into systemic risk. Recent banking crisis has highlighted the importance of grasping and controlling the systemic risk, and the acceptance by Central Banks to ease their monetary policies for saving default or illiquid banks. This last point shows that banks would pay less attention to liquidity risk which, in turn, can become a new important channel of loss. The financial regulation focuses on the most important and “systemic” banks in the global network. However, to quantify the expected loss associated with liquidity risk, it is worth to analyze sensitivity to this channel for the various elements of the global bank network. A small bank is not considered as potentially systemic; however the interaction of small banks all together can become a systemic element. This paper analyzes the impact of medium and small banks interaction on a set of banks which is considered as the core of the network. The proposed method uses the structure of agent-based model in a two-class environment. In first class, the data from actual balance sheets of 22 large and systemic banks (such as BNP Paribas or Barclays) are collected. In second one, to model a network as closely as possible to actual interbank market, 578 fictitious banks smaller than the ones belonging to first class have been split into two groups of small and medium ones. All banks are active on the European interbank network and have deposit and market activity. A simulation of 12 three month periods representing a midterm time interval three years is projected. In each period, there is a set of behavioral descriptions: repayment of matured loans, liquidation of deposits, income from securities, collection of new deposits, new demands of credit, and securities sale. The last two actions are part of refunding process developed in this paper. To strengthen reliability of proposed model, random parameters dynamics are managed with stochastic equations as rates the variations of which are generated by Vasicek model. The Central Bank is considered as the lender of last resort which allows banks to borrow at REPO rate and some ejection conditions of banks from the system are introduced. shown that the three groups of European interbank network do not have the same response, and that intermediate banks are the most sensitive to liquidity risk.
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