v1.2.0
NIMBLE is a system for building and sharing analysis methods for statistical models, especially for hierarchical models and computationally-intensive methods (such as MCMC, Laplace approximation, and SMC).
Version 1.2.0 provides extensive new functionality, including:
- A Pólya-gamma sampler,
sampler_polyagamma, for conjugate sampling of linear predictor parameters in logistic regression model specifications, including handling zero inflation and stochastic design matrices. - A new sampler,
sampler_noncentered, which samples the mean or standard deviation of a set of random effect values in a transformed space such that the random effects are deterministically shifted or scaled given new values of their hyperparameters. For random effects written in a centered parameterization, sampling is performed as if they had been written in a noncentered parameterization, thereby enabling a variant on the Yu and Meng (2011) interweaving sampling strategy of sampling in both parameterizations. - A completely revamped MCEM algorithm, fixing a bug so that any parts of the model not connected to the latent states are included in MLE calculations, giving greater control and adding minor extensions to the ascent-based MCEM approach, using automatic derivatives in the maximization when possible, and converting
buildMCEMto be a nimbleFunction rather than an R function. - Adaptive Gauss-Hermite quadrature (AGHQ) for integrating over latent effects, as an extension of NIMBLE's Laplace approximation functionality. Also adds user-friendly R functions,
runLaplaceandrunAGHQ, for using Laplace and AGHQ approximation for maximum likelihood estimation. - A more flexible optimization system via
nimOptim, with support fornlminbbuilt in as well as the capability for users to provide potentially arbitrary optimization functions in R. - Allowing the use of nimbleFunctions with setup code in models either for user-defined functions via
<-or for user-defined distributions via~. This supports holding large objects outside of model nodes for use in models.
In addition to the new functionality above, other enhancements and bug fixes include:
- Erroring out if the
RW_blocksampler is assigned to any discrete nodes. - Improving the speed of MCMC building in certain cases with many simple samplers by using
inheritsrather thanis. - Adding an argument to
buildMCMCcontrolling whether to initialize values in the model. - Improving the efficiency of setting up derivative information for models with multivariate nodes with many elements.
- Providing ability to control number of digits printed in C++ output.
- Allowing use of categorical MCMC sampler with user-specified
dcat-like distributions. - Warning of use of backward indexing in nimble models.
- Improve documentation of LKJ distribution and derivative tracking in the AD system.
- Fixing some internals related to memory handling in compiled code to avoid intermittent errors and crashes occurring in testing.
- Fixing a harmless typo causing partial name matching in R.
- Fixing an insufficient check for conjugacy in stickbreaking specifications.
- Removing spurious warning when
returnTypeischaracter()in a nimbleFunction. - Fixing incorrect error message when
getParamused with non-existent node. - Fixing compilation failures occurring on Red Hat Linux.
- Reenabling functionality for user-provided Eigen library and related updates to autoconf configuration.
- Enhancing functionality to support model macros.
- Removing deprecated
is.na.vecandis.nan.vec. - Removing deprecated dummy functions for
compareMCMCsfunctions.