BibTeX
@article{2311.09446v3,
Author = {Joonha Park},
Title = {Scalable simulation-based inference for implicitly defined models using
a metamodel for Monte Carlo log-likelihood estimator},
Eprint = {2311.09446v3},
ArchivePrefix = {arXiv},
PrimaryClass = {stat.ME},
Abstract = {Models implicitly defined through a random simulator of a process have become
widely used in scientific and industrial applications in recent years. However,
simulation-based inference methods for such implicit models, like approximate
Bayesian computation (ABC), often scale poorly as data size increases. We
develop a scalable inference method for implicitly defined models using a
metamodel for the Monte Carlo log-likelihood estimator derived from
simulations. This metamodel characterizes both statistical and simulation-based
randomness in the distribution of the log-likelihood estimator across different
parameter values. Our metamodel-based method quantifies uncertainty in
parameter estimation in a principled manner, leveraging the local asymptotic
normality of the mean function of the log-likelihood estimator. We apply this
method to construct accurate confidence intervals for parameters of partially
observed Markov process models where the Monte Carlo log-likelihood estimator
is obtained using the bootstrap particle filter. We numerically demonstrate
that our method enables accurate and highly scalable parameter inference across
several examples, including a mechanistic compartment model for infectious
diseases.},
Year = {2023},
Month = {Nov},
Url = {http://arxiv.org/abs/2311.09446v3},
File = {2311.09446v3.pdf}
}