Dear all,
I wanted to let you know about four phylogenetic comparative methods (PCM) 
packages that have become available on (3 on CRAN and 1 on GitHub) recently 
that hopefully will be interesting to somebody. Three of them go significantly 
beyond the Brownian motion (BM) and Ornstein-Uhlenbeck (OU) processes.

1) There is a new version of mvSLOUCH available. The most important change is 
that
the inference engine has been completely rewritten. Instead of directly 
evaluating the multivariate normal density formula it uses the PCMBase (R 
package, see below) to obtain the value of the likelihood in linear (in number 
of tip species) instead of quadratic time. Furthermore, as there is no need to 
store the between-species-between-traits variance covariance matrix much larger 
clades, then previously can be handled. From the user's perspective the main 
changes are the interface and increased functionality:
a) the phylogeny has to be now in the phylo (instead of ouch) format,
b) the trait data has to be a matrix (and not a data frame),
c) the package can automatically compare multiple models (BM, OUOU, OUBM and 
different assumed structures on the drift and diffusion matrices of the 
multivariate OU procees), function  estimate.evolutionary.model(), and return 
the one with the lowest AICc (the set of models to consider can either be 
automatically generated or user defined, see generate.model.setups()),
d) the user can set entries of the OU model's parameters to desired values 
(e.g. 0) and this will be fixed through the whole estimation,
e) a number of control parameters to be passed to the estimation procedure and 
optim() are available for the user to manipulate

2) PCMFit: the goal of PCMFit is to provide a generic tool for inference and 
selection of phylogenetic comparative models (PCMs). Currently, the package 
implements Gaussian and mixed Gaussian phylogenetic models (MGPM) over all tree 
types (including non-ultrametric and polytomic trees). The package supports 
non-existing traits or missing measurements for some of the traits on some of 
the species. The package supports specifying measurement error associated with 
each tip of the tree or inferring a measurement error parameter for a group of 
tips. The Gaussian phylogenetic models include various parametrizations of 
Brownian motion (BM) and Ornstein-Uhlenbeck (OU) multivariate branching 
processes. The mixed Gaussian models represent models with shifts in the model 
parameters as well as the type of model at points of the tree. Each shift-point 
is described as a pair of a shift-node and associated type of model (e.g. OU or 
BM) driving the trait evolution from the beginning of the branch le
 ading to the shift-node toward the shift-node and its descendants until 
reaching a tip or another shift-point. The function PCMFit is used to fit a 
given PCM or a MGPM for a given tree with specified shift-points. The function 
PCMFitMixed is used to fit an ensemble of possible MGPMs over a tree for which 
the shift-points are unknown. This function can perform model selection of the 
best MGPM for a given tree and data according to an information loss function 
such as the Akaike information criterion (AIC). The package has been thoroughly 
tested and applied to real data in the related research article entitled 
"Automatic Generation of Evolutionary Hypotheses using Mixed Gaussian 
Phylogenetic Models" (currently in review). Currently, the package is available 
from https://github.com/venelin/PCMFit . The web-page 
https://venelin.github.io/PCMFit/ provides access to documentation and related 
resources.

3) PCMBase: the computational engine that mvSLOUCH uses. Given a phylogeny 
(phylo format), traits' (multivariate) measurements and a user provided model 
of the traits' evolution the package calculates the likelihood. The family of 
allowed models is rather general. The package can handle any model for which 
lineages after speciation do not interact and the density of the transition 
along a branch is:
i) Gaussian
ii) the mean at the end of the branch depends linearly on the trait value at 
the start of the branch
iii) the covariance matrix does not depend on the value at the start of the 
branch
The likelihood is calculated in linear in number of tip species time.
The package is described in
Venelin Mitov, Krzysztof Bartoszek, Georgios Asimomitis, Tanja Stadler (2018).
Fast likelihood evaluation for multivariate phylogenetic comparative methods: 
the PCMBase R package
arXiv URL https://arxiv.org/abs/1809.09014 .

3) pcmabc: a package that allows for simulation and ABC estimation under any 
model for which the user can provide a function to simulate trait 
(discrete/continuous, uni- or multivariate) evolution along a branch. Special 
support is given for SDE based models, using the yuima package.
Krzysztof Bartoszek, Pietro Lio' (2019) Modelling trait dependent speciation 
with Approximate Bayesian Computation. Acta Physica Polonica B Proceedings 
Supplement 12(1): 25-47.
URL https://www.actaphys.uj.edu.pl/fulltext?series=Sup&vol=12&page=25 .

Hope somebody will find these useful

Best wishes
Krzysztof Bartoszek

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