opticut-package | Likelihood Based Optimal Partitioning for Indicator Species Analysis |
allComb | Finding all possible binary partitions |
as.data.frame.opticut | Likelihood based optimal partitioning for indicator species analysis |
as.data.frame.summary.opticut | Likelihood based optimal partitioning for indicator species analysis |
as.data.frame.summary.uncertainty | Quantifying uncertainty for fitted objects |
as.data.frame.uncertainty | Quantifying uncertainty for fitted objects |
bestmodel | Best model, partition, and MLE |
bestmodel.opticut | Likelihood based optimal partitioning for indicator species analysis |
bestmodel.optilevels | Optimal number of factor levels |
bestpart | Best model, partition, and MLE |
bestpart.opticut | Likelihood based optimal partitioning for indicator species analysis |
bestpart.uncertainty | Quantifying uncertainty for fitted objects |
bestpart.uncertainty1 | Quantifying uncertainty for fitted objects |
beta2i | Indicator values |
bsmooth | Quantifying uncertainty for fitted objects |
bsmooth.uncertainty | Quantifying uncertainty for fitted objects |
bsmooth.uncertainty1 | Quantifying uncertainty for fitted objects |
checkComb | Finding all possible binary partitions |
check_strata | Quantifying uncertainty for fitted objects |
col2gray | Color palettes for the opticut package |
dolina | Land snail data set |
fix_levels | Likelihood based optimal partitioning for indicator species analysis |
getMLE | Best model, partition, and MLE |
getMLE.opticut | Likelihood based optimal partitioning for indicator species analysis |
kComb | Finding all possible binary partitions |
lorenz | Lorenz curve bases thresholds and partitions |
occolors | Color palettes for the opticut package |
oComb | Ranking based binary partitions |
ocoptions | Options for the opticut package |
opticut | Likelihood based optimal partitioning for indicator species analysis |
opticut.default | Likelihood based optimal partitioning for indicator species analysis |
opticut.formula | Likelihood based optimal partitioning for indicator species analysis |
opticut1 | Likelihood based optimal partitioning for indicator species analysis |
optilevels | Optimal number of factor levels |
plot.lorenz | Lorenz curve bases thresholds and partitions |
plot.opticut | Likelihood based optimal partitioning for indicator species analysis |
print.opticut | Likelihood based optimal partitioning for indicator species analysis |
print.opticut1 | Likelihood based optimal partitioning for indicator species analysis |
print.summary.lorenz | Lorenz curve bases thresholds and partitions |
print.summary.opticut | Likelihood based optimal partitioning for indicator species analysis |
print.summary.uncertainty | Quantifying uncertainty for fitted objects |
print.uncertainty | Quantifying uncertainty for fitted objects |
print.uncertainty1 | Quantifying uncertainty for fitted objects |
quantile.lorenz | Lorenz curve bases thresholds and partitions |
rankComb | Ranking based binary partitions |
sindex | Weighted relative suitability index |
strata | Likelihood based optimal partitioning for indicator species analysis |
strata.opticut | Likelihood based optimal partitioning for indicator species analysis |
strata.uncertainty | Quantifying uncertainty for fitted objects |
summary.lorenz | Lorenz curve bases thresholds and partitions |
summary.opticut | Likelihood based optimal partitioning for indicator species analysis |
summary.uncertainty | Quantifying uncertainty for fitted objects |
uncertainty | Quantifying uncertainty for fitted objects |
uncertainty.opticut | Quantifying uncertainty for fitted objects |
wplot | Likelihood based optimal partitioning for indicator species analysis |
wplot.opticut | Likelihood based optimal partitioning for indicator species analysis |
wplot.opticut1 | Likelihood based optimal partitioning for indicator species analysis |
wrsi | Weighted relative suitability index |