imabc - Incremental Mixture Approximate Bayesian Computation (IMABC)
Provides functionality to perform a likelihood-free method
for estimating the parameters of complex models that results in
a simulated sample from the posterior distribution of model
parameters given targets. The method begins with a
accept/reject approximate bayes computation (ABC) step applied
to a sample of points from the prior distribution of model
parameters. Accepted points result in model predictions that
are within the initially specified tolerance intervals around
the target points. The sample is iteratively updated by drawing
additional points from a mixture of multivariate normal
distributions, accepting points within tolerance intervals. As
the algorithm proceeds, the acceptance intervals are narrowed.
The algorithm returns a set of points and sampling weights that
account for the adaptive sampling scheme. For more details see
Rutter, Ozik, DeYoreo, and Collier (2018) <arXiv:1804.02090>.