Efficient Simulation and Conditional Functional Limit Theorems for Ruinous Heavy-tailed Random Walks
Jose Blanchet, Jingchen Liu

TL;DR
This paper introduces change-of-measure techniques for analyzing rare events in heavy-tailed stochastic processes, enabling efficient Monte Carlo estimation and deriving conditional limit theorems for ruin probabilities.
Contribution
It develops a novel mixture-based change-of-measure approach for rare-event analysis, Monte Carlo efficiency, and conditional distribution approximation in heavy-tailed settings.
Findings
Constructed strongly efficient Monte Carlo estimators for rare events.
Controlled expected termination time even when conditional expectation is infinite.
Derived functional conditional central limit theorems extending classical results.
Abstract
The contribution of this paper is to introduce change of measure based techniques for the rare-event analysis of heavy-tailed stochastic processes. Our changes-of-measure are parameterized by a family of distributions admitting a mixture form. We exploit our methodology to achieve two types of results. First, we construct Monte Carlo estimators that are strongly efficient (i.e. have bounded relative mean squared error as the event of interest becomes rare). These estimators are used to estimate both rare-event probabilities of interest and associated conditional expectations. We emphasize that our techniques allow us to control the expected termination time of the Monte Carlo algorithm even if the conditional expected stopping time (under the original distribution) given the event of interest is infinity -- a situation that sometimes occurs in heavy-tailed settings. Second, the mixture…
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Taxonomy
TopicsProbability and Risk Models · Advanced Queuing Theory Analysis · Insurance, Mortality, Demography, Risk Management
