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Usage of the niche metric functions (former ‘resniche’ package)

Miquel De Cáceres, CREAF

Oriol Lapiedra, CREAF

2024-08-21

Introduction

In this document we show how to use the functions described in De Cáceres et al. (2011) by following an example of dietary preferences in pigeons belonging to two populations (Moià and Barcelona) in Catalonia (north east of Spain). We begin by loading the library and the data:

library(indicspecies)
data(pigeons)

The data consists of three items: the resource use matrix for each pigeon population and the matrix of dissimilarities between pairs of resources (seeds).

ls()
#>  [1] "dfood"          "diet.barcelona" "diet.moia"      "groups"        
#>  [5] "groupskm"       "indval"         "indvalori"      "indvalrest"    
#>  [9] "indvalspcomb"   "p"              "pcv"            "phi"           
#> [13] "prefsign"       "prefstat"       "sc"             "sc2"           
#> [17] "wetcomb"        "wetkm"          "wetland"        "wetlandpa"

Resemblance between diet resources

Before starting any resource niche calculation, we can inspect the matrix of dissimilarities between the \(r=6\) resources, \(\mathbf{D}\):

dfood
#>                Oats      Peas   Popcorn       Soy Sunflower
#> Peas      0.7029375                                        
#> Popcorn   0.3706196 0.5070959                              
#> Soy       0.7738801 0.6645980 0.8638219                    
#> Sunflower 0.7656489 0.9773428 0.8784905 0.8669801          
#> Wheat     0.3948828 0.5705974 0.2836482 0.7740283 1.0000000

These can be summarized using a dendrogram. For example:

plot(hclust(dfood, method="average"), h=-1, xlab="", 
     ylab="Distance", main="", sub="", ylim=c(0.2,1))

Some seeds are quite similar (e.g. popcorn, wheat or oats), whereas sunflower differs substantially from all other resources.

Resource niche analysis at the population level

Resource use of populations

We begin by showing the resource use data for pigeons of Barcelona and Moia, expressed as proportions (i.e., the vector \(\mathbf{f}\) for each population):

diet.pop.barcelona <- colSums(diet.barcelona)
round(diet.pop.barcelona/sum(diet.pop.barcelona), dig=3)
#>      Oats      Peas   Popcorn       Soy Sunflower     Wheat 
#>     0.049     0.001     0.028     0.024     0.455     0.442
diet.pop.moia <- colSums(diet.moia)
round(diet.pop.moia/sum(diet.pop.moia), dig=3)
#>      Oats      Peas   Popcorn       Soy Sunflower     Wheat 
#>     0.002     0.018     0.091     0.045     0.054     0.791

Whereas pigeons in Moià feed almost exclusively on wheat, those of Barcelona combine wheat and sunflower seeds.

Niche breadth in populations

We will determine the resource niche breadth of each of the two populations as De Cáceres et al. (2011):

\(B_{pop} = (1/2)\sum_{j=1}^r\sum_{k=1}^r{f_jf_kd_{jk}}\)

We first conduct our calculations without taking into account the resemblance between resources (which is equal to stating that \(d_{jk}=1\) in all cases):

nichevar(P=diet.barcelona, mode="single")
#>               B        LC        UC
#> Niche 0.2966578 0.2722551 0.3380455
nichevar(P=diet.moia, mode="single")
#>               B        LC        UC
#> Niche 0.1807663 0.1036205 0.2589456

In general, we can say that the niche breadth of the population in Moià is smaller than the niche breadth of the population in Barcelona. If we repeat the same calculations with the matrix of resource resemblance, we realize that the niche breadth of both populations becomes smaller:

popvar.barcelona <- nichevar(P=diet.barcelona, D=dfood, 
                            mode="single")
popvar.barcelona
#>               B        LC        UC
#> Niche 0.2453822 0.2334829 0.2579871
popvar.moia <- nichevar(P=diet.moia, D=dfood, mode="single")
popvar.moia
#>               B        LC        UC
#> Niche 0.0853328 0.0272147 0.1671342

The reason is that the first analysis was assuming that all resources were equally (and maximally) distinct, while the second analysis accounts for the similarity between some resources. Moreover, note that the niche breadth of Moià has decreased more than the niche breadth of Barcelona. This reflects that the resources being used by pigeons of Moià are more similar than the resources used by pigeons of Barcelona.

Overlap between populations

We can now calculate the niche overlap between the two pigeon populations: \[ O_{12} = \frac{\sum_{j=1}^r\sum_{k=1}^r{f_{1j}f_{2k}(1-d_{jk}^2)}}{\sqrt{\sum_{j=1}^r\sum_{k=1}^r{f_{1j}f_{1k}(1-d_{jk}^2)}\sum_{j=1}^r\sum_{k=1}^r{f_{2j}f_{2k}(1-d_{jk}^2)}}} \] Using function nicheoverlap():

nicheoverlap(P1=diet.barcelona, P2=diet.moia, mode="single")
#>                 O        LC        UC
#> Overlap 0.7419319 0.4541432 0.9282876
nicheoverlap(P1=diet.barcelona, P2=diet.moia, mode="single", D = dfood)
#>                 O        LC        UC
#> Overlap 0.7912472 0.5417935 0.9436135

If we include the resemblance between resources, the degree of overlap increases, for the same reason that we obtained smaller niche breadth statistics when resemblances were included.

Resource niche analysis at the individual level

In this section, we perform a resource niche analysis at individual level. In particular, we are interested in assessing how much the resource niche of individuals differs from that of their corresponding population. For this, we need to calculate a measure of the degree of individual specialization.

Resource use of individuals

We begin by showing the resource use data for all 23 pigeons in the sample from the Barcelona population, expressed as proportions (i.e., matrix \(\mathbf{F}\) for Barcelona):

round(sweep(diet.barcelona, 1, FUN="/", 
            rowSums(diet.barcelona)), dig=3)
#>     Oats  Peas Popcorn   Soy Sunflower Wheat
#> 1  0.000 0.000   0.000 0.000     0.020 0.980
#> 2  0.000 0.000   0.000 0.000     1.000 0.000
#> 3  0.000 0.000   0.000 0.000     1.000 0.000
#> 4  0.025 0.000   0.153 0.000     0.000 0.822
#> 5  0.000 0.000   0.000 0.000     0.965 0.035
#> 6  0.000 0.023   0.136 0.000     0.648 0.193
#> 7  0.000 0.000   0.000 0.000     0.795 0.205
#> 8  0.042 0.000   0.000 0.000     0.000 0.958
#> 9  1.000 0.000   0.000 0.000     0.000 0.000
#> 10 0.014 0.000   0.000 0.000     0.014 0.973
#> 11 0.000 0.000   0.000 0.000     0.350 0.650
#> 12 0.000 0.000   0.000 0.000     0.047 0.953
#> 13 0.000 0.000   0.000 0.000     0.437 0.562
#> 14 0.000 0.000   0.000 0.000     0.389 0.611
#> 15 0.000 0.000   0.000 0.549     0.451 0.000
#> 16 0.000 0.000   0.000 0.000     0.913 0.087
#> 17 0.000 0.000   0.113 0.075     0.755 0.057
#> 18 0.000 0.000   0.043 0.000     0.743 0.214
#> 19 0.000 0.000   0.000 0.000     0.667 0.333
#> 20 0.000 0.000   0.000 0.000     0.367 0.633
#> 21 0.000 0.000   0.000 0.000     0.910 0.090
#> 22 0.000 0.000   0.019 0.019     0.786 0.175
#> 23 0.442 0.000   0.000 0.000     0.000 0.558

We see that most individuals in Barcelona feed on either sunflower or wheat, but there are some individuals (like pigeon 9) which prefer oats. Now we display the resource use data for the 19 pigeons representing the population in Moià (i.e., matrix \(\mathbf{F}\) for Moià):

round(sweep(diet.moia, 1, FUN="/", 
            rowSums(diet.moia)), dig=3)
#>     Oats  Peas Popcorn   Soy Sunflower Wheat
#> 1  0.000 0.000   0.000 0.324     0.000 0.676
#> 2  0.000 0.000   0.000 0.012     0.000 0.988
#> 3  0.000 0.000   0.000 0.000     0.000 1.000
#> 4  0.000 0.000   0.000 0.000     0.000 1.000
#> 5  0.000 0.000   0.000 0.000     0.000 1.000
#> 6  0.000 0.000   0.267 0.000     0.000 0.733
#> 7  0.000 0.000   0.319 0.000     0.000 0.681
#> 8  0.027 0.311   0.041 0.000     0.000 0.622
#> 9  0.000 0.000   0.000 0.000     0.000 1.000
#> 10 0.000 0.000   0.148 0.000     0.000 0.852
#> 11 0.000 0.000   0.200 0.000     0.000 0.800
#> 12 0.000 0.000   0.235 0.000     0.000 0.765
#> 13 0.000 0.000   0.000 0.000     0.000 1.000
#> 14 0.000 0.000   0.119 0.339     0.136 0.407
#> 15 0.000 0.000   0.000 0.000     0.000 1.000
#> 16 0.000 0.000   0.000 0.000     0.000 1.000
#> 17 0.000 0.000   0.430 0.000     0.000 0.570
#> 18 0.000 0.000   0.000 0.000     0.583 0.417
#> 19 0.000 0.000   0.000 0.000     1.000 0.000

Many pigeons from Moià feed on wheat seeds almost exclusively, but some of them have broader preferences.

Measuring the degree of individual specialisation

We begin our resource niche analysis by calculating the niche breadth of each individual in the population, \(B_i\): \[ B_i = (1/2)\sum_{j=1}^r\sum_{k=1}^r{f_{ij}f_{ik}d_{jk}} \] We calculate the values for the individuals of both populations:

indvar.barcelona <- nichevar(P=diet.barcelona, D=dfood)
summary(indvar.barcelona)
#>        B          
#>  Min.   :0.00000  
#>  1st Qu.:0.01755  
#>  Median :0.08153  
#>  Mean   :0.11168  
#>  3rd Qu.:0.19890  
#>  Max.   :0.24609
indvar.moia <- nichevar(P=diet.moia, D=dfood)
summary(indvar.moia)
#>        B          
#>  Min.   :0.00000  
#>  1st Qu.:0.00000  
#>  Median :0.01015  
#>  Mean   :0.04031  
#>  3rd Qu.:0.01861  
#>  Max.   :0.24306

Most individuals have niche breadths that are smaller than the niche breadth of their corresponding population, although a few individuals in Moià have niche breadths larger than the population value. A niche breadth equal to zero indicates that only one resource is exploited.

We can compare the niche breadth values of the two populations using a non-parametric test.

wilcox.test(indvar.barcelona$B, indvar.moia$B)
#> Warning in wilcox.test.default(indvar.barcelona$B, indvar.moia$B): no es pot
#> calcular un p-valor exacte amb empats
#> 
#>  Wilcoxon rank sum test with continuity correction
#> 
#> data:  indvar.barcelona$B and indvar.moia$B
#> W = 328, p-value = 0.005446
#> alternative hypothesis: true location shift is not equal to 0

The Wilcoxon test confirms that the niche breadth of pigeons in Barcelona is generally higher than that of pigeons in Moià, as we saw at the population level.

In order to calculate the degree of individual specialization, Bolnick et al. (2002) defined WIC/TNW, i.e. the ratio between the within individual component (i.e. average niche width) and the total niche width of the population. Similarly we define the following specialization measure, that takes into account the resemblance between resources: \[ S_{pop} = \frac{\sum_{i=n}^n{B_i}/n}{B_{pop}} \] where \(B_i\) is the niche breadth of each individual, and \(B_{pop}\) is the niche breadth of the population. Note that it is possible that \(B_i\) values can be larger than \(B_{pop}\). However, we do not expect the average of \(B_i\) values to be larger than \(B_{pop}\). If we calculate \(S_{pop}\) for the two populations we have:

Spec.barcelona <- mean(indvar.barcelona$B)/popvar.barcelona$B
Spec.barcelona
#> [1] 0.4551234
Spec.moia <- mean(indvar.moia$B)/popvar.moia$B
Spec.moia
#> [1] 0.4723618

Surprisingly, the degree of specialization in Moià seems slightly higher than that in Barcelona. To see whether this holds statistically, we can calculate the degree of specialization of each individual: \[ S_i = \frac{B_i}{B_{pop}} \] which, in R, is:

Spec.ind.barcelona <- indvar.barcelona$B/popvar.barcelona$B
Spec.ind.moia <- indvar.moia$B/popvar.moia$B

Finally, we compare this two vectors in a Wilcoxon test:

wilcox.test(Spec.ind.barcelona, Spec.ind.moia)
#> Warning in wilcox.test.default(Spec.ind.barcelona, Spec.ind.moia): no es pot
#> calcular un p-valor exacte amb empats
#> 
#>  Wilcoxon rank sum test with continuity correction
#> 
#> data:  Spec.ind.barcelona and Spec.ind.moia
#> W = 277, p-value = 0.1392
#> alternative hypothesis: true location shift is not equal to 0

Which tells us that those differences in individual specialization are not statistically significant.

Measuring the degree of overlap between individuals

The idea of this section is to determine how much the niche of each individual overlaps with the niche of other individuals in the population. This can be done by calling function nicheoverlap() using mode = "pairwise":

O.barcelona <- nicheoverlap(diet.barcelona,D=dfood, mode="pairwise")
O.moia <- nicheoverlap(diet.moia,D=dfood, mode="pairwise")

These calls to nicheoverlap() return a symmetric square matrix with as many rows and columns as individuals in the resource use data frame. Each cell value in the symmetric matrix is the overlap between two individuals of the population. Using these matrices we can derive the average overlap in each population:

mean(O.barcelona[lower.tri(O.barcelona)])
#> [1] 0.6726374
mean(O.moia[lower.tri(O.moia)])
#> [1] 0.8438816

We can also calculate the average overlap between each individual and the remaining individuals in its population:

O.barcelona.ind <- (rowSums(O.barcelona)-1)/(nrow(O.barcelona)-1)
summary(O.barcelona.ind)
#>    Min. 1st Qu.  Median    Mean 3rd Qu.    Max. 
#>  0.5400  0.6028  0.6558  0.6726  0.7595  0.8055
O.moia.ind <- (rowSums(O.moia)-1)/(nrow(O.moia)-1)
summary(O.moia.ind)
#>    Min. 1st Qu.  Median    Mean 3rd Qu.    Max. 
#> 0.09157 0.89915 0.90649 0.84388 0.90965 0.91134

We substracted one in the numerator and denominator in order to exclude the target individual from the average (the overlap between a resource niche and itself is always one). Apparently, the individuals in Moià have a larger degree of overlap with individuals of their population than individuals in Barcelona. A non-parametric test seems to confirm this difference:

wilcox.test(O.barcelona.ind, O.moia.ind)
#> Warning in wilcox.test.default(O.barcelona.ind, O.moia.ind): no es pot calcular
#> un p-valor exacte amb empats
#> 
#>  Wilcoxon rank sum test with continuity correction
#> 
#> data:  O.barcelona.ind and O.moia.ind
#> W = 37, p-value = 4.549e-06
#> alternative hypothesis: true location shift is not equal to 0

Bibliography

Bolnick, Daniel I., Louie H. Yang, James a. Fordyce, Jeremy M. Davis, and Richard Svanbäck. 2002. Measuring individual-level resource specialization.” Ecology 83 (10): 2936–41.
De Cáceres, Miquel, Daniel Sol, Oriol Lapiedra, and Pierre Legendre. 2011. A framework for estimating niche metrics using the resemblance between qualitative resources.” Oikos 120 (February): 1341–50.

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