Budgeted Robust Intervention Design for Financial Networks with Common Asset Exposures
Giuseppe C. Calafiore

TL;DR
This paper develops a linear programming framework for optimally allocating buffers in financial networks to enhance default resilience and minimize systemic losses under uncertainty, with scalable solutions and practical insights.
Contribution
It introduces exact linear programming methods for robust intervention design in financial networks considering common asset exposures and uncertainty sets.
Findings
Optimal buffers can be computed via linear programs with linear complexity.
Resilience-maximizing and loss-minimizing interventions nearly coincide under diffuse shocks.
Numerical experiments show significant improvements over uniform and proportional allocations.
Abstract
In the context of containment of default contagion in financial networks, we here study a regulator that allocates pre-shock capital or liquidity buffers across banks connected by interbank liabilities and common external asset exposures. The regulator chooses a nonnegative buffer vector under a linear budget before asset-price shocks realize. Shocks are modeled as belonging to either an or an uncertainty set, and the design objective is either to enlarge the certified no-default/no-insolvency region or to minimize worst-case clearing losses at a prescribed stress radius. Four exact synthesis results are derived. The buffer that maximizes the default resilience margin is obtained from a linear program and admits a closed-form minimal-budget certificate for any target margin. The buffer that maximizes the insolvency resilience margin is computed by a single…
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