Hierarchical and adaptive methods for accurate and efficient risk estimation
Abstract
Practical systems that depend on unknown factors are frequently well-represented
through a stochastic model. By estimating statistics of the underlying model, critical features of the system can be inferred. When such inferences assist decision-making, accurate uncertainty quantification is crucial, meaning that robust error
estimates or confidence intervals accompany the estimated parameters. Sufficiently
accurate estimates can require several samples from the underlying model. When
exact samples of the model are computationally infeasible or unavailable, one must
carefully balance statistical errors with approximation bias to retain accurate uncertainty quantification. The multilevel Monte Carlo (MLMC) approach provides
an efficient framework for accurately approximating expectations of quantities of
interest given a hierarchy of increasingly accurate model approximations. Motivated by problems arising in financial credit risk management and option pricing,
this thesis considers the development and analysis of novel MLMC estimators
within two frameworks: Firstly, we develop a hierarchy of nested MLMC estimators to estimate systems of repeatedly nested expectations given approximate
samples of the model conditioned an underlying filtration at a discrete progression
of time points. Secondly, we consider an adaptive MLMC scheme to approximate
point evaluations of the distribution of underlying quantities of interest. Both
methods are combined to compute the probability of significant financial losses
arising from credit risk factors. The method attains a specified error tolerance ε
with an asymptotic cost of order ε
−2
|log ε|
2
, reduced from order ε
−5 using standard
Monte Carlo estimation