chronos
is the main function fitting a chronogram to a
phylogenetic tree whose branch lengths are in number of substitution
per sites.
makeChronosCalib
is a tool to prepare data frames with the
calibration points of the phylogenetic tree.
chronos.control
creates a list of parameters to be passed
to chronos
.
chronos(phy, lambda = 1, model = "correlated", quiet = FALSE,
calibration = makeChronosCalib(phy),
control = chronos.control())
# S3 method for chronos
print(x, ...)
makeChronosCalib(phy, node = "root", age.min = 1,
age.max = age.min, interactive = FALSE, soft.bounds = FALSE)
chronos.control(...)
an object of class "phylo"
.
value of the smoothing parameter.
a character string specifying the model of substitution rate variation among branches. The possible choices are: ``correlated'', ``relaxed'', ``discrete'', or an unambiguous abbreviation of these.
a logical value; by default the calculation progress are displayed.
a data frame (see details).
a list of parameters controlling the optimisation procedure (see details).
an object of class c("chronos", "phylo")
.
a vector of integers giving the node numbers for which a calibration point is given. The default is a short-cut for the root.
vectors of numerical values giving the minimum
and maximum ages of the nodes specified in node
.
a logical value. If TRUE
, then phy
is
plotted and the user is asked to click close to a node and enter the
ages on the keyboard.
(currently unused)
in the case of chronos.control
: one of the five
parameters controlling optimisation (unused in the case of
print.chronos
).
chronos
returns an object of class c("chronos",
"phylo")
. There is a print method for it. There are additional
attributes which can be visualised with str
or extracted with
attr
.
makeChronosCalib
returns a data frame.
chronos.control
returns a list.
chronos
replaces chronopl
but with a different interface
and some extensions (see References).
The known dates (argument calibration
) must be given in a data
frame with the following column names: node, age.min, age.max, and
soft.bounds (the last one is yet unused). For each row, these are,
respectively: the number of the node in the ``phylo'' coding standard,
the minimum age for this node, the maximum age, and a logical value
specifying whether the bounds are soft. If age.min = age.max, this
means that the age is exactly known. This data frame can be built with
makeChronosCalib
which returns by default a data frame with a
single row giving age = 1 for the root. The data frame can be built
interactively by clicking on the plotted tree.
The argument control
allows one to change some parameters of
the optimisation procedure. This must be a list with names. The
available options with their default values are:
tol = 1e-8: tolerance for the estimation of the substitution rates.
iter.max = 1e4: the maximum number of iterations at each optimization step.
eval.max = 1e4: the maximum number of function evaluations at each optimization step.
nb.rate.cat = 10: the number of rate categories if model
= "discrete"
(set this parameter to 1 to fit a strict clock
model).
dual.iter.max = 20: the maximum number of alternative iterations between rates and dates.
epsilon = 1e-6: the convergence diagnostic criterion.
The command chronos.control()
returns a list with the default
values of these parameters. They may be modified by passing them to
this function, or directly in the list.
Kim, J. and Sanderson, M. J. (2008) Penalized likelihood phylogenetic inference: bridging the parsimony-likelihood gap. Systematic Biology, 57, 665--674.
Paradis, E. (2013) Molecular dating of phylogenies by likelihood methods: a comparison of models and a new information criterion. Molecular Phylogenetics and Evolution, 67, 436--444.
Sanderson, M. J. (2002) Estimating absolute rates of molecular evolution and divergence times: a penalized likelihood approach. Molecular Biology and Evolution, 19, 101--109.
# NOT RUN {
tr <- rtree(10)
### the default is the correlated rate model:
chr <- chronos(tr)
### strict clock model:
ctrl <- chronos.control(nb.rate.cat = 1)
chr.clock <- chronos(tr, model = "discrete", control = ctrl)
### How different are the rates?
attr(chr, "rates")
attr(chr.clock, "rates")
# }
# NOT RUN {
cal <- makeChronosCalib(tr, interactive = TRUE)
cal
### if you made mistakes, you can edit the data frame with:
### fix(cal)
chr <- chronos(tr, calibration = cal)
# }
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