Sample-based rarefaction prevents temporal variation in sampling effort from
affecting diversity estimates (see Gotelli N.J., Colwell R.K. 2001 Quantifying
biodiversity: procedures and pitfalls in the measurement and comparison of species
richness. Ecology Letters 4(4), 379-391) by selecting an equal number of samples
across all years in a time series.
resampling counts the number of unique samples taken in each year (sampling effort),
identifies the minimum number of samples across all years, and then uses this minimum to
randomly resample each year down to that number. Thus, standardising the
sampling effort between years,
standard biodiversity metrics can be calculated based on an equal number of
samples (e.g. using getAlphaMetrics, getAlphaMetrics).
measure is a character
input specifying the chosen currency to be used during the sample-based
rarefaction. It can be a single column name or a vector of two or more column
names - e.g. for BioTIME, measure="ABUNDANCE", measure="BIOMASS"
or measure = c("ABUNDANCE", "BIOMASS").
By default, any observations with NA within the currency field(s) are
removed. You can choose to remove the full sample where such observations are
present by setting conservative to TRUE. resamps can be used to define
multiple iterations, effectively creating multiple alternative datasets
as in each iteration different samples will be randomly selected for the
years where number of samples > minimum.
Note that the function always returns a single data frame, i.e. if resamps > 1,
the returned data frame is the result of individual data frames concatenated
together, one from each iteration identified by a numerical
unique identifier 1:resamps.