diversity_boot(tab, n, n.boot = 1L, n.rare = NULL, H = TRUE, G = TRUE, lambda = TRUE, E5 = TRUE, ...)mlg.table. MLGs in columns and populations in rowsR in the function boot.n.boot < 2 (default), the number of samples 
drawn for each bootstrap replicate will be equal to the number of samples in
the data set.NULL, indicating that each population will be sampled at its own 
size.boot and 
diversity_stats.n.rare is a number greater than zero, then bootstrapping
    is performed by randomly sampling without replacement n.rare
    samples from the data.
    
    n.boot is greater than 1, bootstrapping is performed by
    sampling n.boot samples from a multinomial distribution weighted by the
    proportion of each MLG in the data.
    
    n.boot is less than 2, bootstrapping is performed by 
    sampling N samples from a multinomial distribution weighted by the
    proportion of each MLG in the data.
    
  Downward Bias
    When sampling with replacement, the diversity statistics here present a 
    downward bias partially due to the small number of samples in the data. 
    The result is that the mean of the bootstrapped samples will often be 
    much lower than the observed value. Alternatively, you can increase the
    sample size of the bootstrap by increasing the size of n.boot. Both
    of these methods should be taken with caution in interpretation. There
    are several R packages freely available that will calculate and perform
    bootstrap estimates of Shannon and Simpson diversity metrics (eg.
    entropart, entropy, simboot, and
    EntropyEstimation. These packages also offer unbiased estimators of
    Shannon and Simpson diversity. Please take care when attempting to
    interpret the results of this function.
  
diversity_stats for basic statistic calculation, 
   diversity_ci for confidence intervals and plotting, and 
   poppr. For bootstrap sampling:
   rmultinom boot
library(poppr)
data(Pinf)
tab <- mlg.table(Pinf, plot = FALSE)
diversity_boot(tab, 10L)
## Not run: 
# # This can be done in a parallel fashion (OSX uses "multicore", Windows uses "snow")
# system.time(diversity_boot(tab, 10000L, parallel = "multicore", ncpus = 4L))
# system.time(diversity_boot(tab, 10000L))
# ## End(Not run)
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