
arXiv: 1302.4595
Changes in collateralization have been implicated in significant default (or near-default) events during the financial crisis, most notably with AIG. We have developed a framework for quantifying this effect based on moving between Merton-type and Black-Cox-type structural default models. Our framework leads to a single equation that emcompasses the range of possibilities, including collateralization remargining frequency (i.e. discrete observations). We show that increases in collateralization, by exposing entities to daily mark-to-market volatility, enhance default probability. This quantifies the well-known problem with collateral triggers. Furthermore our model can be used to quantify the degree to which central counterparties, whilst removing credit risk transmission, systematically increase default risk.
12 pages; 5 figures
FOS: Economics and business, Risk Management (q-fin.RM), Quantitative Finance - General Finance, General Finance (q-fin.GN), 91G20, 91B30, 91B74, 91G40, 91G50, 91B55, Quantitative Finance - Risk Management
FOS: Economics and business, Risk Management (q-fin.RM), Quantitative Finance - General Finance, General Finance (q-fin.GN), 91G20, 91B30, 91B74, 91G40, 91G50, 91B55, Quantitative Finance - Risk Management
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