This release adds new features, including inline variable transformations, ordered multinomial models, and flat prior distributions, along with a host of improvements and fixes. Feature: The set_*() functions now accept dplyr::mutate() style semantics, allowing inline variable transformations. Feature: Added ordered multinomial models, with helper function multi() for specifying the outcomes. Accompanied by a new data set hta_psoriasis and vignette. Feature: Implicit flat priors can now be specified, on any parameter, using flat(). Improvement: as.array.stan_nma() is now much more efficient, meaning that many post-estimation functions are also now much more efficient. Improvement: plot.nma_dic() is now more efficient, particularly with lar...
This update introduces support for new pre-implemented normalisation methods as well as new Plotters...
This release fixes the goodness-of-fit calculation for models without auxiliary data. It also adopts...
Adds some miscellaneous improvements. Grouped plots now work better, see http://dmnfarrell.github.io...
This release adds new features for specifying baseline distributions when producing absolute predict...
Feature: Node-splitting models for assessing inconsistency are now available with consistency = "nod...
multinma 0.1.0 Feature: Network plots, using a plot() method for nma_data objects. Feature: as.igra...
Fix: tidyr v1.2.0 breaks ordered multinomial models when some studies do not report all categories (...
Updates include several breaking changes as well as improvements to fmap's functions and info. The b...
Release notes MPI support: Python-level: MPI-distributed NumPy arrays. C-level: code generation for...
New features Added smoothed predicted survival curves to the plot.dynSuv(). Smoothing is based on t...
New features tidy_add_estimate_to_reference_rows() now also populate p-values and confidence interv...
PyMC 4.0.0b1 ⚠ This is the first beta of the next major release for PyMC 4.0.0 (formerly PyMC3). 4.0...
New features: Nuisance parameters to model systematic uncertainties, currently only from PDF / scal...
New features: Nuisance parameters for ratio-based methods! This required a major refactoring of mad...
Added a NEWS.md file to track changes to the package. pkgdown site now available at https://jasenfi...
This update introduces support for new pre-implemented normalisation methods as well as new Plotters...
This release fixes the goodness-of-fit calculation for models without auxiliary data. It also adopts...
Adds some miscellaneous improvements. Grouped plots now work better, see http://dmnfarrell.github.io...
This release adds new features for specifying baseline distributions when producing absolute predict...
Feature: Node-splitting models for assessing inconsistency are now available with consistency = "nod...
multinma 0.1.0 Feature: Network plots, using a plot() method for nma_data objects. Feature: as.igra...
Fix: tidyr v1.2.0 breaks ordered multinomial models when some studies do not report all categories (...
Updates include several breaking changes as well as improvements to fmap's functions and info. The b...
Release notes MPI support: Python-level: MPI-distributed NumPy arrays. C-level: code generation for...
New features Added smoothed predicted survival curves to the plot.dynSuv(). Smoothing is based on t...
New features tidy_add_estimate_to_reference_rows() now also populate p-values and confidence interv...
PyMC 4.0.0b1 ⚠ This is the first beta of the next major release for PyMC 4.0.0 (formerly PyMC3). 4.0...
New features: Nuisance parameters to model systematic uncertainties, currently only from PDF / scal...
New features: Nuisance parameters for ratio-based methods! This required a major refactoring of mad...
Added a NEWS.md file to track changes to the package. pkgdown site now available at https://jasenfi...
This update introduces support for new pre-implemented normalisation methods as well as new Plotters...
This release fixes the goodness-of-fit calculation for models without auxiliary data. It also adopts...
Adds some miscellaneous improvements. Grouped plots now work better, see http://dmnfarrell.github.io...