As long-term datasets increase in scope and length, new analytical tools are being developed to capture patterns of species interactions over time. The package codyn
includes recently developed metrics of ecological community dynamics. Functions in codyn
implement metrics that are explicitly temporal, and include the option to calculate them over multiple replicates. Functions fall into two categories: temporal diversity indices and community stability metrics.
Many traditional measure of community structure represent a 'snapshot in time' whereas ecological communities are dynamic and many are experiencing directional change with time. The diversity indices in codyn
are temporal analogs to traditional diversity indices such as richness and rank-abundance curves. They include:
turnover
calculates total turnover as well as the proportion of species that either appear or disappear between timepoints.
mean_rank_shift
quantifies relative changes in species rank abundances by taking the sum difference of species ranks in consecutive time points. This metric goes hand-in-hand with "rank clocks," a useful visualization tool for shifts in species ranks.
rate_change
analyzes differences in species composition between samples at increasing time lags. It reflects the rate of directional change in community composition.
rate_change_interval
produces a data frame containing differences in species composition between samples at increasing time intervals.
Ecologists have long debated the relationship between species diversity and stability. Unstable species populations may stabilize aggregate community properties if a decrease in one species is compensated for by an increase in another. In a time series, this should be reflected by a pattern in which species negatively covary or fluctuate asynchronously while total community stability remains relatively stable. codyn
includes a function to characterize community stability, community_stability
, and three metrics to characterize species covariance and asynchrony:
variance_ratio
characterizes species covariance [@schluter1984; @houlahan2007], and includes a null-modeling approach to test significance [@hallett2014]. Null modeling is built-in to the variance_ratio
function. Two additional functions, cyclic_shift
and confint.cyclic_shift
, allow this method to be generalized to other test statistics.
synchrony
has two options. The first compares the variance of the aggregated community with the variance of individual components [@loreau2008]. The second compares the average correlation of each individual species with the rest of the aggregated community [@gross2014].
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