Title: Community Assembly
1Community Assembly
- A pervasive theme in community ecology is that
the species composition of a community is
governed by deterministic assembly rules - Typically these rules emphasize the importance of
interspecific interactions (e.g. niche overlap,
body size distributions)
2Community Assembly
- In this section we will focus on assembly rules
that predict the presence or absence of
particular species combinations
3Community Assemblylaboratory evidence?
- The best evidence laboratory studies
- Gilpin et al. (1986) examined the structure of
Drosophia communties. - When communities were established with 10 (of 28
considered) species, the subsequent stable
community was always fewer than four species - 2101024 initial combos, lt12 persist
4Community Assemblyfield studies
- Ant communities in Florida mangroves
- Two primary species, limited by island size
formed a checkerboard pattern - Two secondary species, limited by presence of
primary species
5Diamonds Assembly Rules
- Diamond (1975) popularized the study of community
assembly in a detailed account of the
distribution of 141 land-bird species on New
Guinea and its satellite islands in the Bismark
Archipeloago
6Diamonds Assembly Rules
- 1) if one considers all the combinations that
can be formed from a group of related species,
only certain ones of these combinations exist in
nature - 2) these permissible combinations resist
invaders that would transform them into forbidden
combination
7Diamonds Assembly Rules
- 3) a combination that is stable on a large or
species-rich island may be unstable on a small or
species-poor island - 4) on a small or species-poor island a
combination may resist invaders that would be
incorporated on a larger or more species-rich
island
8Diamonds Assembly Rules
- 5) some pairs of species never coexist, either
by themselves or as part of a larger
combination - 6) some pairs of species that form an unstable
combination by themselves may form part of a
stable larger combination - 7) some combination that are composed entirely
of stable sub-combinations are themselves
unstable
9Diamonds Assembly Rules
- Although not explicitly stated, the rules infer
competition (forbidden combinations) - Some of the rules are so general it has been very
difficult to make them operational
10Diamonds Assembly Rules
- In 1979, Conner and Simberloff attacked Diamonds
study suggesting Rules 2,3,4,6, and 7 were either
tautologies or restatements or other rules - Rules 1 and 5 are identical, just differing on
related species
11Diamonds Assembly Rules
- Rule 5 describes a chekerboard pattern of species
occurrences, which is perhaps the simplest of
Diamonds assembly rules. - The rule for a complete checkerboard pattern is
very stringent two species may never co-occur
(99 of 100)
12Diamonds Assembly Rules
- Checkerboard distribution of two Macropygia
cuckoo-dove species in the Bismarck Archipelago
13Diamonds Assembly Rules
- But, is it really that surprising?
- With (2141) 9,870 possible species pairs, 7
pairs showing exclusive distributions may not be
surprising - Because Diamond did not publish original data,
Conner and Simberloff used other data
14Null Assembly ModelsR-mode analyses
- They constrained the observed presence-absence
matrix subject to the following three
constraints - 1) row totals of RMatrix were maintained
- Constraint maintains the differences between
species in their frequency of occurrence
15Null Assembly Models
- 2) column totals of the RMatrix were maintained
- Constraint maintained differences among islands
in the number of species they contained
16Null Assembly Models
- 3) for each row, species occurrences were
restricted to those islands for which total
species richness fell within the range occupied
by the species - Constraint maintained the observed incidence
function for each species (it could not occur in
assemblages larger or smaller than those observed)
17Null Assembly Models
- Although the constraints were too much for
matrices with a large number of widespread
species, recent advances in randomization
algorithms have overcome this shortcoming
18Null Assembly ModelsConnor and Simberloff
19Null Assembly ModelsMatthews
- Matthews (1982) analyzed the occurrence of 13
minnow species distribution in six streams of the
Ozark watershed - Although some species pairs that never
co-occurred in watershed were morphologically and
ecologically similar, the observed number of
checkerboard pairs matched the predictions of the
null model (although assumed binominal
distribution)
20Null Assembly ModelsCriticisms
- The dilution effect because CS analyzed
confamilial groups or entire avifaunas,
competitive effects were no apparent - Diamonds choice of examples suggested that the
ecological guild was the correct unit of measure
(although guild identification is not always easy
or apparent)
21Null Assembly Models
- For example, Graves and Gotelli (1993) tested the
significance of checkerboard distributions in
mixed-species flocks of Amazonian forest birds - Results No difference for the entire assemblage
of flocking or for guilds - Only a difference when analysis was restricted to
congeneric species within feeding guilds
22Table 7.3
23Null Assembly ModelsCriticisms
- Effects of randomization constraints the 3
constraints of CS were severe and made it less
likely that the null hypothesis would be rejected - For example, relaxing the incidence function
constraint, the New Hebrides matrix revealed a
significant negative association
24Null Assembly ModelsCriticisms
- Also, does the assumptions of CS have their
flaws? What if the incidence frequency is
actually influenced by competition? (or some
other force) - How would you test this?
- Compare archipelagoes with varying numbers of
competitors and see if their occurrence frequency
varies
25Null Assembly ModelsCriticisms
- Also, some have claimed that is circular to
constrain marginal totals, because the marginals
also reflect interspecific competition - If true, a separate analysis for determining the
total number of island occurrences is a separate
hypothesis and requires a separate null model
(however, competition may not be only factor in
island distribution)
26Null Assembly ModelsCriticisms
- Should marginal constrains be incorporated into
null model at all? - View 1 co-occurrence patterns are nonrandom,
given the observed sample of species and
islands (appropriate) - View 2 the randomization is viewed as a model of
community colonization in the absence of
competition (not appropriate)
27Null Assembly ModelsCriticisms
- Significance tests CS compared the observed and
expected distributions with a chi-squared test - May not be appropriate due to constraints of
marginal totals (non-linear)
28Other Null Models
- Wright and Biehl (1982) suggested a
shared-island test for detecting unusual
species co-occurrences - For each species pair, they calculated the tail
probability of finding the observed number of
co-occurrences, but with RC transposed
29Wright and Biehl (1982)
- Advantage directly pinpoints particular species
pairs that show aggregated or segregated
distributions (however a few pairs can unduly
influence statistics) - Problem assumes all sites are equivalent, thus
confounds species-site associations with the
effects of species interactions
30Analyzing /- Matrix
- Two modes of analysis Q-mode and R-mode
- Q-mode analysis assesses the similarity of
different columns, indicating how similar sites
are in the species they contain - R-mode compares the rows of the matrix and
indicates how similar species are in the set of
islands they occupy
31Q-mode biogeograpy
- How to quantify the degree of similarity between
2 islands? - Biogeographers have developed such tools as
Jaccards Index (0-1) - J Nc / (N1 N2 Nc)
- But it lacks a statistical distribution. So what?
- What would your null model be?
32A simple colonization model (0)
- Johnson (unpublished 1974 presentation) used the
number of shared species as a simple index of
similarity between sites and then asked what
should be the number of shared species under the
simplest colonization model (Null 0) - Ess mn / P
- (Two islands with m n species, P in the
equiprobable source pool)
33Small-island Limitation (Null 1)
- Habitat availability might be responsible for the
fact that most sites shared more species than
expected compared with Null Hypothesis 0 - In particular, species may be missing from small
islands (lacking appropriate habitat) - Ess mn / Pn (where Pn is of sp. in pool of
larger island (mn)
34Island Limitation
- There could also be a size restriction, but from
the other direction - Islands could be too big, not allowing for
supertramp species to persist - To incorporate this constraint, you could limit
your source pool to only those species which
occur on islands of a particular size or larger
35Island Limitation
- The probability of occurrence is influenced by
community size, island area, or attributes (e.g.
distance) and can be incorporated as an
incidence function
36Nonrandom Dispersal (Null II)
- Null 0 assumes colonization is identical
- If colonization is stochastic, species still
would be expected to occur at different
frequencies on islands because they differ in
their abilities to disperse and persist - However, the attributes related to disperal and
persistence (body size, population size,
geographic range size) are difficult to assess
37Nonrandom Dispersal (Null II)
- What to do?
- So one option is to use the occurrence
distribution to weight species (circular?) - However, marginal constraints do not determine
the occurrence pattern itself - Constraints can be absolute or probabilistic
(more later)
38Problems with Q-mode
- Competition may not be being assessed as pairwise
island comparisons because many are between
islands that have the same species sets.
Consequently, it would fail to detect a
significant checkerboard effect - Second, because the pairs of islands are not
independent, it is not appropriate to ask whether
more than 5 of the pairs are significantly
different from expectation
39Summary of Q- and R-mode
- Q-mode appears strong to test for biogeographic
grouping (similarities) - R-mode is better to assess species interactions
(i.e. competition) at sites shared in common
40Gilpin and Diamond
- Gilpin and Diamond (1982) developed their own
R-mode analysis - For species i on island j, they calculated the
probability of occurrence as - Pij RiCj / N
- Where R is the row total for species i and C is
the column total for island j and N is the grand
total
41Gilpin and Diamond
- Next, they calculated the expected overlap for
each species pair by summing the product of these
probability across all islands - Observed and expected overlaps for each species
pair were standardized and then compared with a
chi-squared test
42Gilpin and Diamond
- If the null hypothesis of independent placement
were true, the histogram of normalized deviates
would follow a normal distribution with unusual
aggregation at the right and unusual segregation
at the left - Upon re-testing the New Hebridean birds, no new
differences were found
43Gilpin and Diamond
- However, the original Bismarck data, they found a
strong excess of positive association and a weak
excess of negative associations (but overall
placed less emphasis on competitive interactions
dictating community structure) - Importance introduced idea that marginal totals
(min max) were expected values, not absolute
constraints
44Gilpin and Diamond
- How? In different runs of a stochastic model, we
would not expect each island to support precisely
the observed number of species, or each species,
to always occur with its observed frequency. - In fact, putting a cap on species numbers could
be interpreted as a competitive cap or limit - Instead, islands are treated as targets
independently by species with some variance about
the expected species number in the null model
45Summary of R-mode Analysis
- The controversy over R-mode analysis reduces to
four issues - 1) Which species and which islands should be
analyzed? - Issues such as source pools, colonizations
potential, habitat availability should be
considered before any analysis is conducted
46Summary of R-mode Analysis
- 2) Which metric should be used?
- What is the proper way to quantify nonrandomness
and species associations in the /- matrix - Since there are many different kinds of
structure in a /- matrix, we will utilize five
different metrics
47Summary of R-mode Analysis
- 2) Which metric should be used?
- A) the number of species combinations
- If assembly rules are operative, there should be
fewer species combinations than expected - B) the number of checkerboard distributions
- Is the most testable of the Diamond Rules and
represent the strongest form of species
competition (complete species repulsion)
48Summary of R-mode Analysis
- 2) Which metric should be used?
- C) the checkerboardness index of Stone and
Roberts (1990) - Measures the overall tendency for species pairs
to co-occur. May reveal competitive pairs, but
not occuring in a perfect checkerboard - D) the togetherness index of Stone and Roberts
(1992) - Measures overall tendency of species to co-occur
(although both positive and negative are
possible)
49Summary of R-mode Analysis
- 2) Which metric should be used?
- E) Schulters Variance Ratio (1984)
- A modified version of checkerboardedness this
measure does not constrain column totals - Different patterns of negative covariation may be
revealed by comparing the variance ratio to null
model predictions
50Summary of R-mode Analysis
- 3) Which simulation procedure should be used?
- If we accept that CS were correct in that
neither islands nor species are equiprobable,
this should be reflected in the null model - Connor and Simberloff (RxC too constrained)
- Gilpin and Diamond (RxC expectations)
51Summary of R-mode Analysis
- 3) Which simulation procedure should be used? Two
alternatives - Gotelli and Graves (R total fixed, C totals
probabilistic) - Observed frequency of each species is fixed and
sites are treated as targets the probability
of occurrence of each sp. at each site is
proportional to the total number of species at
that site. Thus S will vary, but will on average,
be arranged similarly to observed rankings
52Summary of R-mode Analysis
- 3) Which simulation procedure should be used? Two
alternatives - Gotelli and Graves (RxC totally probabilistic)
- Less constrained, allows R and C to be
probabilistic). The placement is not simulated,
but rather N species occurrences across the
entire matrix - Specifically, it the cell probability that a
species (Ri/N) and selecting the site (Cj/N) will
occur simultaneously thus the cell probability
is (RiCj / N2), hence the most likely occurrence
will be the most common species on the most
species-rich island and vice-versa
53Grouping Options
- In EcoSim, you can group by Guild (row)
- This analysis expects a data matrix in which each
species is classified into a single guild - Guild designations are in the second column
- The simulation reshuffles the guild labels to
different species (e.g. reorganizes guilds)
54Grouping Options
- You can also group by Region (columns)
- Region designations are given in the second row
of the matrix - The simulation does not alter the structure of
the matrix, but reshuffles the region labels
among the different sites
55Grouping Options
- Another option in the Guild Analysis for EcoSim
is that of favored states. - This approach tests the hypothesis of Fox that
species are added sequentially to a community so
that different functional groups or guilds are
represented as evenly as possible
56Favored States
- Communities are classified as favored or
unfavored. - EcoSim reshuffles the guild labels then examines
each column of the matrix and designates it as
favored or unfavored
57(No Transcript)
58Incidence Functions
- Concept introduced by Diamond (1975) to describe
the probability of occurrence of a species with
respect to ordered site characteristics, such as
species number
59Incidence Functions
- The x-axis is the number of species on the island
and the y axis is the proportion of islands in a
given size class that were occupied by the species
60Incidence Functions
- High-S species occurred mostly on large,
species-rich islands, whereas the much less
common supertramp species showed the opposite
pattern
61Incidence Functions
- Gilpin and Diamond (1981) explored the connection
between the incidence function and the
equilibrium theory of island biogeography - The IF represents the time that a species
occupies islands of a particular size class
(early succession species occur briefly) - Paradigm was a lack of competition with each
species having a species-specific colonization
and extinction rates
62Incidence Functions
- The IF may also simply reflect the distribution
of habitat types among islands - For example, high-S species may be habitat
specialists and those specialized habitat may
only exist on larger islands
63Incidence Functions
- We can use null models to clarify what the proper
interpretations of the IF should be - Whittam and Siegel-Causey (1981) examined Alaskan
seabird colonies using IF
64Incidence Functions
- They found examples of both high-S species (CM)
as well as supertramps (GWG)
Frequency of Occurrence
Species Richness
65Incidence Functionsother implications
- IF analysis can be used to identify unusual
minimum area requirements for particular species - Just looking at the charts may not be enough as
small islands may be missing certain species due
to the small likelihood of random settlement
66Incidence Functions
- Schoener and Schoener (1983) expanded Diamonds
IF idea to go beyond island area or species
richness. - One can order sites by any number of criteria,
and then the occurrence of species tested against
this ordering (i.e. Mann-Whitney U test a
measure of the strength of ordering)
67Example
- Schoener and Schoener examined 76 species of
birds on 521 small islands in the Bahamas (as
well as other vertebrate groups) - They also measured area, isolation, habitat
availability and vegetation structure
68Occurrence Sequence
- Lizards are perfectly ordered
- Resident birds are highly structured
- Migrant birds are more haphazard
69Results
- Species occurrences were predictable, although
different groups followed different assembly rule - Lizards and resident birds were ordered with
respect to island area, migrant birds were more
related to island isolation - The occurrence of both lizards and birds cold be
predicted by vegetation and habitat structure
70Implications
- Some checkerboards will only be detected when
habitat differences among sites are measured and
incorporated into the analysis - When distributions of species are with respect to
site characteristics, the less the patterns will
conform to a simple checkerboard pattern - An alternative is nested species patterns