This function computes the maximum likelihood estimates of the parameters of a diversity-independent diversification model for a given set of phylogenetic branching times. It also outputs the corresponding loglikelihood that can be used in model comparisons.
bd_ML(
brts,
initparsopt = c(0.1,0.05 * (tdmodel <= 10="" 1)="" +="" *="" (length(brts)="" missnumspec)="" (tdmodel=""> 1)),
idparsopt = c(1,2 + (tdmodel > 1)),
idparsfix = (1:4)[-idparsopt],
parsfix = rep(0,4)[idparsfix],
missnumspec = 0,
tdmodel = 0,
cond = 1,
btorph = 1,
soc = 2,
tol = c(1E-3, 1E-4, 1E-6),
maxiter = 1000 * round((1.25)^length(idparsopt)),
changeloglikifnoconv = FALSE,
optimmethod = 'subplex',
methode = 'lsoda'
)=>
A set of branching times of a phylogeny, all positive
The initial values of the parameters that must be optimized
The ids of the parameters that must be optimized, e.g. 1:3 for intrinsic speciation rate, extinction rate and carrying capacity. The ids are defined as follows: id == 1 corresponds to lambda0 (speciation rate) id == 2 corresponds to mu0 (extinction rate) id == 3 corresponds to lamda1 (parameter controlling decline in speciation rate with time) id == 4 corresponds to mu1 (parameter controlling decline in extinction rate with time)
The ids of the parameters that should not be optimized, e.g. c(1,3) if lambda0 and lambda1 should not be optimized, but only mu0 and mu1. In that case idparsopt must be c(2,4). The default is to fix all parameters not specified in idparsopt.
The values of the parameters that should not be optimized
The number of species that are in the clade but missing in the phylogeny
Sets the model of time-dependence: tdmodel == 0 : constant speciation and extinction rates tdmodel == 1 : speciation and/or extinction rate is exponentially declining with time tdmodel == 2 : stepwise decline in speciation rate as in diversity-dependence without extinction tdmodel == 3 : decline in speciation rate following deterministic logistic equation for ddmodel = 1 tdmodel == 4 : decline in speciation rate such that the expected number of species matches with that of ddmodel = 1 with the same mu
Conditioning: cond == 0 : conditioning on stem or crown age cond == 1 : conditioning on stem or crown age and non-extinction of the phylogeny cond == 2 : conditioning on stem or crown age and on the total number of extant taxa (including missing species) cond == 3 : conditioning on the total number of extant taxa (including missing species)
Sets whether the likelihood is for the branching times (0) or the phylogeny (1)
Sets whether stem or crown age should be used (1 or 2)
Sets the tolerances in the optimization. Consists of: reltolx = relative tolerance of parameter values in optimization reltolf = relative tolerance of function value in optimization abstolx = absolute tolerance of parameter values in optimization
Sets the maximum number of iterations in the optimization
if TRUE the loglik will be set to -Inf if ML does not converge
Method used in optimization of the likelihood. Current default is 'subplex'. Alternative is 'simplex' (default of previous versions)
The method used to solve the master equation under tdmodel = 4, default is 'lsoda'.
gives the maximum likelihood estimate of lambda0
gives the maximum likelihood estimate of mu0
gives the maximum likelihood estimate of lambda1
gives the maximum likelihood estimate of mu1
gives the maximum loglikelihood
gives the number of estimated parameters, i.e. degrees of feedom
gives a message on convergence of optimization; conv = 0 means convergence
The output is a dataframe containing estimated parameters and maximum loglikelihood. The computed loglikelihood contains the factor q! m! / (q + m)! where q is the number of species in the phylogeny and m is the number of missing species, as explained in the supplementary material to Etienne et al. 2012.
- Etienne, R.S. et al. 2012, Proc. Roy. Soc. B 279: 1300-1309, doi: 10.1098/rspb.2011.1439 - Etienne, R.S. & B. Haegeman 2012. Am. Nat. 180: E75-E89, doi: 10.1086/667574
# NOT RUN {
cat("Estimating parameters for a set of branching times brts with the default settings:")
brts = 1:20
bd_ML(brts = brts, cond = 1)
# }
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