cdf_laplace.m Evaluates the standard Laplace cdf.
CE_example_gibbs.m Estimates the shortest path in the bridge example using importance sampling, by first simulating from the optimal importance sampling density via Gibbs sampling, and then using the corresponding CE-optimal estimates as parameters. Uses h.m.
compsum.m Estimates an overflow probability associated with a random (compound) sum, arising from a problem in risk insurance, using the optimal exponential twist.
h.m Returns the shortest path for the bridge example.
loss_probab.m Determines the probability of large portfolio losses in a certain financial model, by first simulating from the optimal importance sampling density via the hit-and-run algorithm, and then using the CE-optimal estimates for importance sampling. Uses score.m.
NeyPea.m Estimating an overflow probability associated with a Neyman-Pearson test using the optimal state-independent change of measure.
OU_process_splitting.m Estimates a hitting probability of a two-dimensional Ornstein-Uhlenbeck process, using splitting. Uses ou_split.m
ou_split.m Implements exact sampling from a two-dimensional Ornstein-Uhlenbeck process, for use with the hitting probability example.
polkinex.m Estimates the tail probability of the steady-state waiting time in an M/G/1 queue, using a control variable estimator suggested by the Pollaczek-Khinchin formula.
score.m Implements a portfolio loss function.
siegmund.m Estimates the hitting time of a positive barrier for a random walk with negative drift via Siegmund's algorithm.
state_dependent_IS_Laplace.m Estimates the overflow probability of a sum of iid Laplace terms, using a state-dependent importance sampling scheme. Uses cdf_laplace.m.
sumlognor.m Estimates an overflow probability of the sum of independent non-identically distributed log-normals, a problem arising in the computation of certain portfolio measures, using conditioning.
waitGG1.m Estimates the steady-state waiting time in an M/M/1 queue via importance sampling with the optimal state-independent change of measure.

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