Class "unmarkedFit"
Contains fitted model information which can be manipulated or extracted using the methods described below.
fitType
:Object of class "character"
call
:Object of class "call"
formula
:Object of class "formula"
data
:Object of class "unmarkedFrame"
sitesRemoved
:Object of class "numeric"
estimates
:Object of class "unmarkedEstimateList"
AIC
:Object of class "numeric"
opt
:Object of class "list"
containing results from
optim
negLogLike
:Object of class "numeric"
nllFun
:Object of class "function"
knownOcc
:unmarkedFitOccu only: sites known to be occupied
K
:unmarkedFitPCount only: upper bound used in integration
mixture
:unmarkedFitPCount only: Mixing distribution
keyfun
:unmarkedFitDS only: detection function used by distsamp
unitsOut
:unmarkedFitDS only: density units
signature(x = "unmarkedFit", i = "ANY", j = "ANY",
drop = "ANY")
: extract one of names(obj), eg 'state' or 'det'
signature(obj = "unmarkedFit")
: back-transform
parameters to original scale when no covariate effects are modeled
signature(object = "unmarkedFit")
: returns parameter
estimates. type can be one of names(obj), eg 'state' or 'det'.
If altNames=TRUE estimate names are more specific.
signature(object = "unmarkedFit")
: Returns confidence
intervals. Must specify type and method (either "normal" or "profile")
signature(object = "unmarkedFit")
: returns expected
values of Y
signature(object = "unmarkedFit")
: extracts data
signature(object = "unmarkedFit")
: calculates and extracts
expected detection probabilities
signature(object = "unmarkedFit")
: calculates and extracts
expected false positive detection probabilities
signature(object = "unmarkedFit")
: calculates and extracts
expected probabilities a true positive detection was classified as certain
signature(object = "unmarkedFit")
: Returns hessian
matrix
signature(obj = "unmarkedFit",
coefficients = "matrixOrVector")
: Returns estimate and SE on original
scale when covariates are present
signature(object = "unmarkedFit")
: Same as coef(fit)?
signature(x = "unmarkedFit")
: Names of parameter levels
signature(object = "unmarkedFit")
: returns negative
log-likelihood used to estimate parameters
signature(object = "unmarkedFit")
: Parametric
bootstrapping method to assess goodness-of-fit
signature(x = "unmarkedFit", y = "missing")
: Plots
expected vs. observed values
signature(object = "unmarkedFit")
: Returns predictions
and standard errors for original data or for covariates in a new
data.frame
signature(fitted = "unmarkedFit")
: used by confint
method='profile'
signature(object = "unmarkedFit")
: returns residuals
signature(object = "unmarkedFit")
: returns number
of sites in sample
signature(obj = "unmarkedFit")
: returns standard errors
signature(object = "unmarkedFit")
: concise results
signature(object = "unmarkedFit")
: results with more
details
signature(object = "unmarkedFit")
: refit model with
changes to one or more arguments
signature(object = "unmarkedFit")
: returns
variance-covariance matrix
signature(object="unmarkedFitColExt")
:
Returns the smoothed trajectory from a colonization-extinction
model fit. Takes additional logical argument mean which specifies
whether or not to return the average over sites.
signature(object="unmarkedFitColExt")
:
Returns the projected trajectory from a colonization-extinction
model fit. Takes additional logical argument mean which specifies
whether or not to return the average over sites.
signature(object="unmarkedFit")
:
Returns the log-likelihood.
signature(m1="unmarkedFit", m2="unmarkedFit")
:
Returns the chi-squared statistic, degrees-of-freedom, and p-value from
a Likelihood Ratio Test.
This is a superclass with child classes for each fit type
showClass("unmarkedFit") # Format removal data for multinomPois data(ovendata) ovenFrame <- unmarkedFrameMPois(y = ovendata.list$data, siteCovs = as.data.frame(scale(ovendata.list$covariates[,-1])), type = "removal") # Fit a couple of models (fm1 <- multinomPois(~ 1 ~ ufc + trba, ovenFrame)) summary(fm1) # Apply a bunch of methods to the fitted model # Look at the different parameter types names(fm1) fm1['state'] fm1['det'] # Coefficients from abundance part of the model coef(fm1, type='state') # Variance-covariance matrix vcov(fm1, type='state') # Confidence intervals using profiled likelihood confint(fm1, type='state', method='profile') # Expected values fitted(fm1) # Original data getData(fm1) # Detection probabilities getP(fm1) # log-likelihood logLik(fm1) # Back-transform detection probability to original scale # backTransform only works on models with no covariates or # in conjunction with linearComb (next example) backTransform(fm1, type ='det') # Predicted abundance at specified covariate values (lc <- linearComb(fm1, c(Int = 1, ufc = 0, trba = 0), type='state')) backTransform(lc) # Assess goodness-of-fit parboot(fm1) plot(fm1) # Predict abundance at specified covariate values. newdat <- data.frame(ufc = 0, trba = seq(-1, 1, length=10)) predict(fm1, type='state', newdata=newdat) # Number of sites in the sample sampleSize(fm1) # Fit a new model without covariates (fmNull <- update(fm1, formula = ~1 ~1)) # Likelihood ratio test LRT(fm1, fmNull)
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