Mathematical Modeling of Systemic Risk in Financial Networks: Managing Default Contagion and Fire Sales
Daniel Ritter

TL;DR
This paper develops mathematical models to analyze systemic risk in financial networks, focusing on default contagion and fire sales, providing insights into stability and risk management for financial institutions.
Contribution
It extends existing contagion models to weighted networks and derives explicit criteria for system stability against small shocks.
Findings
Explicit asymptotic expression for total damage from contagion
Necessary and sufficient stability criterion for unshocked systems
Model extension to weighted financial networks
Abstract
As impressively shown by the financial crisis in 2007/08, contagion effects in financial networks harbor a great threat for the stability of the entire system. Without sufficient capital requirements for banks and other financial institutions, shocks that are locally confined at first can spread through the entire system and be significantly amplified by various contagion channels. The aim of this thesis is thus to investigate in detail two selected contagion channels of this so-called systemic risk, provide mathematical models and derive consequences for the systemic risk management of financial institutions. The first contagion channel we consider is default contagion. The underlying effect is here that insolvent institutions cannot service their debt or other financial obligations anymore - at least partially. Debtors and other directly impacted parties in the system are thus forced…
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Taxonomy
TopicsBanking stability, regulation, efficiency · Credit Risk and Financial Regulations · Stochastic processes and financial applications
