Community Stability Metrics

Lauren M. Hallett

2020-11-30

Overview

Ecologists have long debated the relationship between species diversity and stability. One key question in this debate is how the individual components of a community (e.g., species in species-rich communities) affect the stability of aggregate properties of the whole community (e.g., biomass production). It is increasingly recognized that unstable species populations may still maintain stable community productivity 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 remained relatively stable.

codyn includes a function to characterize community stability, community_stability, and three metrics to characterize species covariance and asynchrony:

Example dataset

To illustrate each function, codyn uses a dataset of plant composition from an annually burned watershed at the Konza Prairie Long-Term Ecological Research site in Manhattan, KS. The knz_001d dataset spans 24 years and includes 20 replicate subplots.

library(codyn)
library(knitr)
data(knz_001d)
kable(head(knz_001d))
species year subplot abundance
achillea millefolium 1986 A_1 0.5
ambrosia psilostachya 1988 A_1 0.5
ambrosia psilostachya 1990 A_1 3.0
ambrosia psilostachya 1995 A_1 3.0
ambrosia psilostachya 1991 A_1 3.0
ambrosia psilostachya 1998 A_1 15.0

Community stability

The community_stability function aggregates species abundances within replicate and time period, and uses these values to calculate community stability as the temporal mean divided by the temporal standard deviation (Tilman 1999). It includes an optional argument to calculate community stability across multiple replicates, which returns a data frame with the name of the replicate column and the stability value.

KNZ_stability <- community_stability(knz_001d, 
                                   time.var = "year", 
                                   abundance.var = "abundance", 
                                   replicate.var = "subplot")
kable(head(KNZ_stability))
subplot stability
A_1 4.12
A_2 3.99
A_3 6.51
A_4 4.32
A_5 3.42
B_1 4.48

If replicate.var is left as NA, the function will aggregate all values within a time period and return an integer value.

KNZ_A1_stability <- community_stability(df = subset(knz_001d, subplot=="A_1"),  
                                      time.var = "year", 
                                      abundance.var = "abundance")
KNZ_A1_stability

[1] 4.12

Species covariance

Variance ratio

Calculating the variance ratio

The variance ratio was one of the first metrics to characterize patterns of species covariance (Schluter 1984) and was used in an early synthesis paper of species covariance in long time series (Houlahan et al. 2007). The metric compares the variance of the community (\(C\)) as a whole relative to the sum of the individual population (\(x_i\)) variances:

\[ VR = \frac{Var(C)}{\sum_{i}^{N} Var(x_i)} \]

where:

\[ Var(C) = \sum_{i = 1}^{N} Var(x_i) + 2\left(\sum_{i = 1}^{N - 1} \sum_{j = i + 1}^{N} Covar(x_i, x_j)\right) \]

If species vary independently then the variance ratio will be close to 1. A variance ratio < 1 indicates predominately negative species covariance, whereas a variance ratio > 1 indicates that species generally positively covary.

Significance testing

The variance ratio remains widely used but has been subject to a number of criticisms. Importantly, early uses of the variance ratio either did not include significance tests, or tested significance by comparing observed values to those returned by scrambling each species’ time series. Null models using fully-scrambled species time series can generate spurious null expectations of covariance because the process disrupts within-species autocorrelation. Phase-scrambling (Grman et al. 2010) and cyclic shifts (Hallett et al. 2014; adapted from Harms et al. 2001) have been used to address this issue.

variance_ratio uses a cyclic shift permutations to conduct null modeling for significance tests. In this method a starting time point is randomly selected for each species’ time series. This generates a null community matrix in which species abundances vary independently but within-species autocorrelation is maintained (for each species, the time series is disrupted only once).

If a replicate column is specified, the default variance_ratio setting calculates a null variance ratio for each replicate in the dataset, averages these values, and repeats as many times as specified by bootnumber. This vector of averaged, null variance ratios is then sampled for lower and upper confidence intervals, which are returned along with the average observed variance ratio.

KNZ_variance_ratio <- variance_ratio(df = knz_001d, 
                                   species.var = "species", 
                                   time.var = "year",
                                   abundance.var = "abundance", 
                                   bootnumber = 10, 
                                   replicate.var = "subplot")

kable(KNZ_variance_ratio)

Alternatively, if a replicate column is specified and average.replicates is set to FALSE, the function will return a vector of null variance ratios for each replicate in the dataset, and return the subsequent confidence intervals and observed variance ratios for each replicate.

KNZ_variance_ratio_avgrep <- variance_ratio(knz_001d, 
                                          time.var = "year",
                                          species.var = "species",
                                          abundance.var = "abundance",  
                                          bootnumber = 10, 
                                          replicate.var = "subplot", 
                                          average.replicates = FALSE)

kable(head(KNZ_variance_ratio_avgrep))

If replicate.var is left as NA the function assumes that there is a single observation for each species within a given time period.

KNZ_A1_variance_ratio <- variance_ratio(df = subset(knz_001d, subplot=="A_1"), 
                                      time.var = "year", 
                                      species.var = "species",  
                                      abundance.var = "abundance",  
                                      bootnumber = 10) 
kable(KNZ_A1_variance_ratio)

General cyclic shift function

codyn also includes the option to apply a cyclic shift permutation on other test statistics:

  • cyclic_shift returns an S3 object of test statistics from a user-specified function when applied to a null community generated via a cyclic shift permutation. It requires a dataframe with a species.var, time.var and abundance.var column, and optional replicate.var column. The user-specified function should operate on a community matrix (e.g., cov).

The length of the “out” parameter in the object is the number of null iterations as specified by bootnumber). If multiple replicates are specified, null values are averaged among replicates for each iteration, but a different cyclic shift permutation is applied to each replicate within an iteration.

  • confint returns the confidence intervals from the S3 object produced by cyclic_shift.

Variance ratio and species richness

A second criticism of the variance ratio is that it is sensitive to species richness. This is a particular concern when the metric is used to compare communities that have different levels of species richness. The most conservative approach is to restrict use of the variance ratio to two-species communities (Hector et al. 2010). Comparing the effect size of the observed versus null variance ratio can also account for richness differences between communities. Two alternative metrics that quantify species asynchrony have been developed in part to respond to this issue.

Species synchrony

Synchrony Option 1: “Loreau”

Loreau and de Mazancourt (2008) developed a metric of species synchrony that compares the variance of aggregated species abundances with the summed variances of individual species:

\[ Synchrony = \frac{{\sigma_(x_T)}^{2}}{({\sum_{i} \sigma_(x_i)})^{2}}\]

where:

\[ x_T(t) = {\sum_{i=1}^{N} x_i(t))} \]

This measure of synchrony is standardized between 0 (perfect asynchrony) and 1 (perfect synchrony). A virtue of this metric is that it can be applied across communities of variable species richness. It can also be applied not only to species abundance but also population size and per capita growth rate. However, unlike the variance ratio it does not lend itself to significance testing. In addition, it will return similar values for communities shaped by different processes – for example, even if species vary independently, the synchrony metric may be affected by the number of species and individual species variances (Gross et al. 2014).

In codyn, this is the default metric for the synchrony function and can be easily calculated for multiple replicates in a dataset.

KNZ_synchrony_Loreau <- synchrony(df = knz_001d, 
                         time.var = "year", 
                         species.var = "species", 
                         abundance.var = "abundance", 
                         replicate.var = "subplot")
kable(head(KNZ_synchrony_Loreau))
subplot synchrony
A_1 0.114
A_2 0.123
A_3 0.040
A_4 0.117
A_5 0.143
B_1 0.107

If there are no replicates within the dataset allow the replicate.var argument to default to NA.

KNZ_A1_synchrony_Loreau <- synchrony(df = subset(knz_001d, subplot=="A_1"),
                            time.var = "year",
                            species.var = "species", 
                            abundance.var = "abundance")
KNZ_A1_synchrony_Loreau

[1] 0.114

Synchrony Option 2: “Gross”

Gross et al. (2014) developed a metric of synchrony that compares the average correlation of each individual species with the rest of the aggregated community:

\[ Synchrony = (1/N){{\sum_{i}Corr(x_i, \sum_{i\neq{j}}{x_j})}}\]

This measure of synchrony is standardized from -1 (perfect asynchrony) to 1 (perfect synchrony) and is centered at 0 when species fluctuate independently. A virtue of this metric is it not sensitive to richness and has the potential for null-model significance testing. It may under-perform on short time series because it is based on correlation, and care should be taken when applying it to communities that contain very stable species (i.e., whose abundances do not change throughout the time series).

In codyn, this metric is calculated with the Gross option in the synchrony function and can be easily calculated for multiple replicates in a dataset. If a species does not vary over the course of the time series synchrony will issue a warning and will remove that species from the calculation.

KNZ_synchrony_Gross <- synchrony(df = knz_001d, 
                           time.var = "year", 
                           species.var = "species",  
                           abundance.var = "abundance", 
                           metric = "Gross", 
                           replicate.var = "subplot")
## Warning in FUN(X[[i]], ...): One or more species has non-varying abundance
## within a subplot and has been omitted
kable(head(KNZ_synchrony_Gross))
subplot synchrony
A_1 -0.019
A_2 0.031
A_3 0.011
A_4 0.009
A_5 0.069
B_1 -0.023

If there are no replicates within the dataset allow the replicate.var argument to default to NA.

KNZ_A1_synchrony_Gross <- synchrony(df = subset(knz_001d, subplot=="A_1"),
                              time.var = "year", 
                              species.var = "species",  
                              abundance.var = "abundance", 
                              metric = "Gross")
KNZ_A1_synchrony_Gross

[1] -0.0194

###Comparison between “Loreau” and “Gross” Qualititively, the degree to which the synchrony metrics calculated by Loreau versus Gross will differ depends on the abundance distributions of the species in a community. The Loreau method and the variance ratio are both based on variances, and are therefore more heavily influenced by abundant species. In contrast, the Gross method is based on correlation and consequently weights species equally.

Citations

Grman, Emily, Jennifer A. Lau, Donald R. Schoolmaster, and Katherine L. Gross. 2010. “Mechanisms Contributing to Stability in Ecosystem Function Depend on the Environmental Context.” Ecology Letters 13 (11): 1400–1410. https://doi.org/10.1111/j.1461-0248.2010.01533.x.

Gross, Kevin, Bradley J. Cardinale, Jeremy W. Fox, Andrew Gonzalez, Michel Loreau, H. Wayne Polley, Peter B. Reich, and Jasper van Ruijven. 2014. “Species Richness and the Temporal Stability of Biomass Production: A New Analysis of Recent Biodiversity Experiments.” The American Naturalist 183 (1): 1–12. https://doi.org/10.1086/673915.

Hallett, Lauren M., Joanna S. Hsu, Elsa E. Cleland, Scott L. Collins, Timothy L. Dickson, Emily C. Farrer, Laureano A. Gherardi, et al. 2014. “Biotic Mechanisms of Community Stability Shift Along a Precipitation Gradient.” Ecology 95 (6): 1693–1700. https://doi.org/10.1890/13-0895.1.

Harms, Kyle E., Richard Condit, Stephen P. Hubbell, and Robin B. Foster. 2001. “Habitat Associations of Trees and Shrubs in a 50-Ha Neotropical Forest Plot.” Journal of Ecology 89 (6). https://doi.org/10.1111/j.1365-2745.2001.00615.x.

Hector, A., Y. Hautier, P. Saner, L. Wacker, R. Bagchi, J. Joshi, M. Scherer-Lorenzen, et al. 2010. “General Stabilizing Effects of Plant Diversity on Grassland Productivity Through Population Asynchrony and Overyielding.” Ecology 91 (8): 2213–20. https://doi.org/10.1890/09-1162.1.

Houlahan, J. E., D. J. Currie, K. Cottenie, G. S. Cumming, S. K. M. Ernest, C. S. Findlay, S. D. Fuhlendorf, et al. 2007. “Compensatory Dynamics Are Rare in Natural Ecological Communities.” Proceedings of the National Academy of Sciences 104 (9): 3273–7. https://doi.org/10.1073/pnas.0603798104.

Loreau, Michel, and Claire de Mazancourt. 2008. “Species Synchrony and Its Drivers: Neutral and Nonneutral Community Dynamics in Fluctuating Environments.” The American Naturalist 172 (2): E48–E66. https://doi.org/10.1086/589746.

Schluter, Dolph. 1984. “A Variance Test for Detecting Species Associations, with Some Example Applications.” Ecology 65 (3): 998–1005. https://doi.org/10.2307/1938071.

Tilman, D. 1999. “The Ecological Consequences of Changes in Biodiversity: A Search for General Principles.” Ecology 80 (5): 1455–74. https://doi.org/10.1890/0012-9658%281999%29080%5B1455%3ATECOCI%5D2.0.CO%3B2.