The last passage time before ruin: Theory and applications in liquidation risk management
Speaker: Zijia Wang
Affliation: Chinese University of Hong Kong
Abstract
In this paper, we study the last time a Lévy insurance risk process is above a certain threshold before ruin. In the theoretical part, we first derive the joint Laplace transform of the last passage time and the remaining time until ruin. We then study an optimal prediction problem of approximating the last passage time before ruin with a stopping time under the L_1 distance, showing that the optimum occurs when the risk process first drops below a certain level. The stopping boundary is independent of the initial surplus level, and we provide an explicit characterization of this boundary. These theoretical results fill a gap in the literature, where last passage times are typically analyzed over an infinite time horizon or an independent exponential time horizon. By focusing on the dynamics of risk processes up to ruin, our findings offer interesting insights into liquidation risk management. These are discussed in the application part, where we develop a framework to endogenously determine financial distress and rehabilitation levels under contemporary regulations. We further analyze the liquidation time under Chapter 7 and Chapter 11 of the U.S. Bankruptcy Code. Numerical examples and an empirical study using real data are presented to illustrate the practical implications of our results.
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