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Ecological Resemblance

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Title: Ecological Resemblance


1
Ecological Resemblance - Outline -
Ecological Resemblance Mode of analysis
Analytical spaces Association Coefficients
Q-mode similarity coefficients Symmetrical
binary coefficients Asymmetrical binary
coefficients Symmetrical quantitative
coefficients Asymmetrical quantitative
coefficients Probabilistic coefficients
Q-mode distance coefficients Metric
distance Semimetrics R-mode coefficients of
dependence Non-abundance measures Species
abundance measures Choice of a coefficient
Welcome to Paradise
2
Ecological Resemblance
A quantitative measure of resemblance (i.e.,
similarity) between either objects (e.g., sites)
and the variables describing them (e.g., species)
can be a end in itself, or the standard precursor
to subsequent ordination and classification
procedures. Association between objects
Q-mode analysis Association between descriptors
R-mode analysis Often times, an examination of
the association hemi-matrix (derived from primary
matrix) suffices to elucidate the basic structure
of the data, and no additional analysis is needed.
3
Modes of Analysis
Catell (1952, 1966) was the first to recognize
that EEB data could be studied from at least 6
viewpoints from 3-D data matrices composed of
descriptors, objects, and times. He defined 6
possible modes of analysis. The two main
viewpoints used in EEB are R-mode or Q-mode. The
important point here is that these two modes of
analysis are based on different measures of
association. Whether a particular analysis is R-
or Q-mode is often confused in the literature
texts due to a lack of clarity.
4
Q- and R-Mode
In order to prevent confusion, any study starting
with the computation of an association matrix
among objects should be called a Q-mode
analysis. Any study starting with the
computation of an association matrix among
descriptors should be called an R-mode analysis.
5
Analytical Space
Following the terminology of Williams Dale
(1965), the space of descriptors (attributes)
will be called A-space. In this space,
objects may be represented along axes that
correspond to the descriptors. Symmetrically,
the space of reference in which the descriptors
are positioned relative to axes corresponding to
objects (or individuals) is called I-space.
6
A-Space - Example of 5 Objects with 2 Descriptors
-
NB The thickness of the lines joining objects is
proportional to their degree of resemblance based
on the two descriptors.
7
Analytical Space
The number of dimensions that can be represented
on paper is obviously limited to two or three.
However, we will see soon, that this simple
analog can be extended to multiple
dimensions. The A- and I-spaces are called
metric or Euclidean because the reference axes
are quantitative and metric. Ordination
procedures by definition are restricted to these
spaces, clustering procedures are not.
8
Ecological Resemblance ?Mode of analysis
?Analytical spaces Association Coefficients
Q-mode similarity coefficients Symmetrical
binary coefficients Asymmetrical binary
coefficients Symmetrical quantitative
coefficients Asymmetrical quantitative
coefficients Probabilistic coefficients
Q-mode distance coefficients Metric
distance Semimetrics R-mode coefficients of
dependence Non-abundance measures Species
abundance measures Choice of a coefficient
9
Association Coefficients
The most usual approach to assess the resemblance
among objects or descriptors is to start with a
rectangular data matrix and condense all of the
information in to a square hemi-matrix of
association values. The structure resulting from
the numerical association analysis may not
necessarily reflect all of the information that
was originally contained in the primary
matrix. Thus, there is considerable importance
to choosing the appropriate measure of
association.
10
Selection of Association Coefficient
The basic considerations for selecting an
appropriate association coefficient fall under
the following (1) the nature of the study
determines the structure of the data to be
evaluated with an association matrix, (2) the
various measures available are subject to
different mathematical constraints (depends upon
whether one continues with ordination or
clustering), (3) computational aspects such as
what measures are available or can be programmed
in particular software.
11
Selection of Association Coefficient
Because there are few mathematical constraints,
biologists are free to define and use any measure
of association suitable to the phenomenon under
study--hence why there are so many coefficients
in the literature. We will use the general term
association coefficient to describe any measure
used to quantify resemblance more
specifically, R-mode studies generally use
dependence coefficients. Q-mode studies typically
use similarity coefficients.
12
Q-Mode Similarity Coefficients
This is the largest group of coefficients in the
literature. All of these coefficients are used
to measure the association between
objects. Similarity measures are never metric
since it is always possible to find two objects,
A B, that are more similar than the sum of
their similarities with another more distant
object C. Thus, similarities can NOT be used to
position objects in metric space (they must be
converted to distances) such as ordinations
however, they can be used in clustering analysis.
13
Similarity Coefficients
Similarity coefficients were first developed for
binary (presence/absence) data and became
generalized for multi-state descriptors with the
advent of computers. A major dichotomy in these
descriptors exists regarding how the coefficient
handles the double-negative or double-zero
situation.
14
Double-Negative Problem
From classical niche theory, we know that species
are distributed unimodally along environmental
gradients. The abundance of a species reaches an
optimum at some central set of conditions and is
minimized near the minimum and maximum of the
gradient sector. The double-zero situation is a
problem in this context because if a species is
present at two sites, this is an indication of
similarity of these sites. However, if a species
is absent from both sites, it may be because both
sites produce an environment that is above the
optimal niche value, below the optimal, or one
above and one below. One cannot tell.
15
Asymmetrical vs. Symmetrical Coefficients
Thus, it is generally preferable to abstain
from drawing biological conclusions from
double-negative situations (except in those
conditions that permit accurate
interpretation). Numerically, this means that
you should skip double zeros when computing
similarity or distance coefficients when using
binary data. Coefficients of this type are
called asymmetrical because they treat zeroes in
a different way than the rest of the data. With
symmetrical coefficients, the zero state for two
objects is treated exactly the same way as for
all other pairs of values, when computing
similarity...
16
Binary Coefficients
In the simplest case, the similarity between two
sites is based on presence-absence (binary) data.
Observations are often summarized in a 2?2 table
Where a the no. of descriptors for which the
two objects are coded as 1 d two objects coded
as 0 b c two objects coded differently p
the sum of all descriptors
17
Simple Matching Coefficients
An obvious way to compute the similarity between
two objects is to count the number of descriptors
that code the objects in the same way and divide
this by the total
Coefficient S1 is called the simple matching
coefficient (Sokal and Michener 1958). When
using the coefficient, one assumes that there is
no difference between double-0 or
double-1. Rogers and Tanimoto (1960) proposed a
variant that gives more weight to differences
18
Simple Matching Coefficients Sokal Sneath
(1963), Sneath Sokal (1973)
S3 counts resemblances as being twice as
important as differences S4 compares
resemblances to differences, measure 0 to ? S5
compares resemblances to marginal totals S6
product of the geometric means of the terms
relative to a d in coefficient S5
19
Simple Matching Coefficients
Coefficients S1 S3 have generally been the most
popular however, there may be times where the
others are appropriate. Three additional
measures are available in the NT-SYS computer
software
Hamann coefficient Yule coefficient Pearsons
phi
20
MVSP is a popular software package that computes
a large number (20) of similarity coefficients.
http//www.kovcomp.co.uk/mvsp/
21
Similarity Coefficients - MVSP Software -
Consider the example of 5 Panamanian cockroach
species scored for the presence/absence (0/1) in
6 habitats
22
MVSP Similarity Coefficients are provided under
cluster analysis options
23
Simple Matching Coefficient - Similarity
Hemi-matrix -
NB diagonal 1
24
Simple Matching Coefficients - MVSP Software -
So what formula does MVSP use to calculate the
simple matching coefficient? SMcij S1 (Sokal
Michener 1958)
Confirm for yourself by comparing two samples
BCI vs. LC
a 3 b 1 c 0 d 1 SM 4/5 0.800
0 1 1 1 1 0 1 1 0 1
25
Asymmetrical Binary Coefficients
Coefficients paralleling the ones just presented
are available for comparing sites using species
presence-absence data, where the comparison must
exclude double-zeros. The best known measure is
Jaccards (1900) coefficient of community, or
more simply Jaccards coefficient
Sørenson (1948) made an important modification by
giving double weight to double presences.
Sørensons coefficient
26
Asymmetrical Binary Coefficients
Another variant of S7 gives triple weight to
double presences
The weights seem to be most important when
dealing with rare species. You may wish to
explore response patterns over 2 or more
weightings.
The asymmetrical analog to S2 provides double
weight to differences in the denominator
27
Asymmetrical Binary Coefficients
Russell Rao (1940) suggested a measure that
allows the comparison of the number of double
presences, in the numerator, to the total number
of species found at all sites, including species
that are absent (d) from the pairs of sites
considered
28
Asymmetrical Binary Coefficients
While Kulcynski (1928) proposed a coefficient
opposing double-presences to differences
Sokal and Sneath (1963) provide a modification of
Kulcynskis index where double-presences are
compared to the marginal totals (a b) and (a
c)
29
Asymmetrical Binary Coefficients
Ochiai (1957) used, as a measure of similarity,
the geometric mean of the ratios of a to the
number of species in each site, i.e., the
marginal totals (a b) and (a c)
S14 is the same as S6 except for the part re
double-zeros. Faith (1983) suggested a
coefficient in which disagreements (0/1s) are
given a weight opposite that of double presences
30
Symmetrical Quantitative Coefficients
EEB descriptors often have more than two states.
The binary coefficients we just discussed can
frequently be extended to accommodate multi-state
descriptors. For example, the simple matching
coefficient may be used as follows
where the numerator contains the number of
descriptors for which the two objects are in the
same state.
31
Symmetrical Quantitative Coefficients - Example
Simple Matching -
For example, if a pair of objects was described
by the following 10 multi-state descriptors
Descriptors
4
32
Symmetrical Quantitative Coefficients
In a similar fashion, it is possible to extend
virtually all of the binary coefficients to
create multi-state coefficients. However,
coefficients of this type often result in the
loss of valuable information, especially in the
case of ordered descriptors for which two objects
can be compared on the basis of the amount of
difference between states.
33
Gowers Coefficient
Gower (1971) proposed a general coefficient of
similarity which can combine different types of
descriptors and process each according to its own
mathematical type. This coefficient can be VERY
useful when you need to record data on binary,
multi-state, and even quantitative variables all
in the same primary matrix! Gowers coefficient
takes the general form
34
Gowers Coefficient
The similarity between two objects is the
average, over the p descriptors, of the
similarities calculated for all descriptors. For
each descriptor j, the partial similarity value
s12j between objects x1 and x2 is computed as
follows For binary descriptors, sj1
(agreement) or 0 (disagreement) double-zeros are
treated as agreement. Qualitative and
semi-quantitative descriptors are treated
following the simple matching coefficient rule
above. Quantitative descriptors (real numbers)
are treated in an interesting way...
35
Gowers Coefficient - Quantitative Descriptors -
For each descriptor, one first computes the
difference between the states of the two objects
y1j - y2j. This value is then divided by the
largest difference (Rj) found for the descriptor
across all sites of the studyor if one prefers,
in a reference population. Since the ratio is
actually a normalized distance, it is subtracted
from 1 to transform it in to a partial similarity
36
Gowers Coefficient
Gowers coefficient may be programmed to include
an additional element of flexibility no
comparison is computed for descriptors where
information is missing for one or the other
object. This is obtained by a value wj, called
Kroneckers delta, describing the presence or
absence of information wj 0 when the
information about yj is missing one or the other
object, or both wj 1 when info is present for
both objects. Thus, the final form of Gowers
coefficient is (ranges from 0 to 1)
37
Gowers Coefficient - Example -
Two sites, eight quantitative descriptors of the
environment.
Descriptors j
Thus, S15(x1,x2) 4.63/7 0.66 (NB Rj, range
of values among all objects for each yj, was
pre-calculated.)
38
Modification
Estabrook and Rogers (1966) made a modification
(S16) of the Gower coefficient. The general
equation is the same as S15, but differs in the
computation of the partial similarities sj. Here
the partial similarity between two objects for a
given descriptor j is computed using a
monotonically decreasing function of partial
similarity. The following function can be used
for two numbers d and k
39
Modification
For the two values d and k, d is the distance
between the states of the two objects x1 and x2
for descriptor j (i.e., the same value y1j-y2j
as in Gowers coefficient) and k is a parameter
determined a priori by the users for each
descriptor. Parameter k is equal to the largest
difference d for which the partial similarity
s12j (for descriptor j) is allowed to be
different from 0. Values of k for the various
descriptors may be quite different from each
other. For example, for a descriptor coded 1 to
4, one might use k 1 for a descriptor coded 1
to 50, perhaps k 10 could be used.
40
Similarity Calculation S16 -Modification Example-
Descriptors j
Possible values of k are used for example. NB
if k 0 for all descriptors, S16 is identical to
the SM coefficient.
41
Asymmetrical Quantitative Coefficients
Just as we did in the previous section, we extend
asymmetrical binary coefficients to accommodate
multi-state descriptors. For example, Jaccards
coefficient becomes
Where the numerator is the number of species with
the same abundance state at the two sites. This
coefficient is useful when species abundances are
coded to a small number of classes and you wish
to strongly contrast the abundances.
42
Bray-Curtis Coefficient
Some coefficients lessen the effect of the
largest differences and may therefore be used
with raw species abundances. The best known
coefficient here is one frequently referred to as
the Bray-Curtis coefficient. The origin is a bit
unclear as the coefficient has been discovered
numerous times in the literature. This
coefficient compares two sites (x1, x2) in terms
of the minimum abundance of each species
43
Bray-Curtis Coefficient
In this formula, W is the sum of the minimum
abundances of the various species A B are the
sums of the abundances of all species at each of
the two sites. For example
Species Abundances
44
Bray-Curtis Coefficient
Obviously, Excel can be used to calculate all of
these similarity measures (many are not available
in pre-packaged statistical software apps).
45
Building Excel Macros For real data sets, it is
usually much easier to write a macro
46
Building Excel Macros
47
Building Excel Macros
May need to edit VB macro
48
Kulczynski Coefficient
Kulczynskis coefficient (1928) also belongs to
this group of measures that are suited to raw
abundance data. The sum of the minima is first
compared to the grand total at each site then
the two values are averaged
For binary data, S18 becomes S13. For the
numerical example just completed (BC)
49
Normalized Data
Often, species distributed across an ecological
gradient are strongly skewed. Several
coefficients have been adapted to handle
normalized abundance data. Data can be
normalized through transformation or scaling
(e.g., 0-7, rare-abundant). For example, Gowers
coefficient (S15) can be easily adapted
50
Modified Gowers Coefficient
s12j 1 - y1j - y2j/Rj, as in S15, and w12j
0 when y1j or y2j absence of information,
or when y1j or y2j absence of species (y1j or
y2j 0), while w12j 1 in all other cases.
51
?2 Similarity
The last quantitative coefficient that excludes
double-zeros is called ?2 Similarity. It is
the complement of the chi-square metric (D15)
discussed subsequently (and we will defer a
fuller discussion of how to apply this measure
until then).
52
Probabilistic Coefficients
Probabilistic coefficients form a special
category. These coefficients are based on
statistical estimation of the significance of the
relationship between objects. One of the better
known coefficients in this category is Goodalls
probabilistic coefficient. This coefficient
takes into account the frequency distribution of
the various states of each descriptor in the
whole set of objects. This coefficient was
originally developed for plant taxonomy, has been
used in paleontology, and has good application in
ecology.
53
Goodalls Probabilistic Coefficient
This coefficient is nice because like Gowers
coefficient, it permits the use of binary and
quantitative descriptors together. Goodall
(1966) first conceived of this index and it was
later improved by Orlóci (1978). NB the use of
this coefficient is limited to cluster analysis
only! There are five computational steps which
we will review first, then do an example.
54
Goodalls Coefficient - Step 1 -
A partial similarity coefficient sj is first
calculated for all pairs of sites and for each
species j. With n sites, there are n(n-1)/2
calculations. If the abundances have been
normalized, choose the s12j function of S19.
Double-zeros MUST be excluded. This is
accomplished by multiplying the partial
similarities sj by the Kronecker delta w12j,
whose value is 0 upon occurrence of
double-zero. For raw abundance data, S17 may be
used, computed for a single species at a
time. The result is a partial similarity matrix
containing as many rows as there is species, and
n(n-1)/2 columns.
55
Goodalls Coefficient - Step 2 -
In a second matrix of the same size, for each
species j and each of the n(n-1)/2 pairs of
sites, one computes the proportion of partial
similarity values belonging to species j that are
larger than or equal to the partial similarity of
the pair of sites being considered the sj value
under consideration is itself included in the
calculation of the proportion. The larger the
proportion, the less similar are the two sites
with regards to the given species.
56
Goodalls Coefficient - Step 3 -
The proportions (probabilities) of step 2 are
combined into a site ? site similarity matrix,
using Fishers method, i.e., by computing the
product ? of the probabilities relative to the
various species. Since none of the probabilities
can be zero (from previous step) there is no
problem in finding product. But, there is an
assumption that species are non-correlated. If
they are not, the procedure requires that you use
principal component scores instead of species
abundances.
57
Goodalls Coefficient - Step 4a -
There are two ways to define Goodalls similarity
index. In the first approach (4a), the products
? are put in increasing order. Following this
the similarity between the sites is calculated as
the proportion of the products that are larger
than or equal to the product of the pair of sites
considered
58
Goodalls Coefficient - Step 4b -
59
Goodalls Coefficient - Example - 5 ponds, 8
phytoplankton species, rel. abundance 0-5
Ponds
60
Goodalls Index - Example Step 1 - Gowers
matrix of partial similarities
Pairs of Ponds
61
Goodalls Index - Example Step 2, Part a
- Determine the proportion of partial similarity
in each row that are ? of the pair of sites
being considered
For example, for the pond pair (214,233), the
sp-3 has a S of 0.67. In the third row, there
are 3 values out of ten (including the value
itself) that are ? 0.67. Thus, the associated
ratio for the new table is 0.3.
62
Goodalls Index - Example Step 2, Part b - Build
a new matrix based upon the proportions of
partial similarity ratios determined in Part-a
63
Goodalls Index - Example Step 3 - Assemble a
symmetrical site ? site hemi-matrix (products of
the terms in each column from previous matrix)
e.g., 0.01200 (1) (0.1) (1) (0.3) (1) (1) (0.4)
(1)
64
Goodalls Index - Example Step 4a - Construct
site ? site similarity hemi-matrix (based on the
proportions of the products that are larger ?
the product corresponding to each pair of sites)
e.g., Product of (212, 431) is 0.28 3 of 10
values are gt, hence the similarity S23 (212,
431) 0.3.
65
Goodalls Index - Example Step 4b - If the
chosen similarity measure is the complement of
the probability assoc. with ?2 (alternative
approach)
e.g., For (212, 431), ?2 -2ln(0.28) 2.5459,
df 2p 16 with a corresponding P 0.99994
S23(212, 431) 1- 0.99994 0.00006
66
? Ecological Resemblance ?Mode of analysis
?Analytical spaces Association Coefficients
?Q-mode similarity coefficients ? Symmetrical
binary coefficients ? Asymmetrical binary
coefficients ? Symmetrical quantitative
coefficients ? Asymmetrical quantitative
coefficients ? Probabilistic coefficients
Q-mode distance coefficients Metric
distance Semimetrics R-mode coefficients of
dependence Non-abundance measures Species
abundance measures Choice of a coefficient
67
Q-mode Distance Coefficients
Distance coefficients are functions that take
their maximum values (usually 1) for two objects
that are completely different, and 0 for objects
that are identical over all descriptors. Note
that all of the similarity coefficients that we
just reviewed can be transformed in to distances,
usually as the complement i.e., D (1 - S).
Some simple transforms include, D ?(1 -
S). Distances, like similarities, are used to
measure the association between objects.
Distance coefficients can be divided in to 3
groups 1) metrics 2) semimetrics 3) nonmetrics
68
Metric Distance Coefficients
Metric distance coefficients share the following
properties 1) minimum 0 if a b, then D(a, b)
0 2) positiveness if a ? b, then D(a, b) gt
0 3) symmetry D(a, b) D(b, a) 4) triangle
inequality D(a, b) D(b, c) ? D(a, c)
69
Semimetric Nonmetric Distance Coefficients
Semimetric These measures do not follow the
triangle inequality axiom. These measures cannot
directly be used to order points in a metric or
Euclidean space because, for three points (a, b,
and c), the sum of the distances from a to b and
from b to c may be smaller than the distance from
a to c. Nonmetric These coefficients can take
negative values, thus violating the property of
positiveness of metrics.
70
Metric Distances
The most common metric measure is the Euclidean
distance. It is computed using Pythagoras
formula, from site-points positioned in a
p-dimensional space called a metric or Euclidean
space
When there are only two descriptors, this
expression becomes the measure of a right-angled
triangle
71
Euclidean Distance
The square of D1 may also be used for clustering
purposes. One should notice though that D12 is a
semimetric, which makes it less appropriate than
D1 for ordination.
Note that ED does not have an upper limit, its
value increases indefinitely with the number of
descriptors. The value also depends upon the
scale of the descriptors. Standardization may
be used to reduce scale effects (instead of using
raw data).
72
Euclidean Distance
The Euclidean distance, used as a measure of
resemblance among sites on the basis of species
abundances, may lead to the following paradox
two sites without any species in common may be at
a smaller distance than another pair of sites
sharing species. Orloci (1978) provides an
example
73
Euclidean Distance
From the previous example, we see that the ED
between x1 and x2, which have no species in
common, is smaller than x1 and x3 which share
species y2 and y3. In general, double-zeros lead
to reduction in distances. This situation must
be avoided (but occurs frequently with community
data, less so with morphometric data). Most
argue that ED should NOT be used with species
abundance data. The main difficulty in ecology
is that a major method (PCA) orders objects in
multidimensional space using D1.
74
Average Euclidean Distance
Various modifications have been proposed to deal
with the drawbacks of the Euclidean distance
applied to species abundances. The effect of the
number of descriptors may be tempered by
computing an average distance
75
Chord Distance
Another modification of ED was proposed by Orloci
(1967) and named the chord distance, which has a
maximum value of ?2 for sites with no species in
common and 0 when two sites share the same
proportions (without it being necessary for the
same absolute abundances). This measure is the
ED computed after scaling the site factors to
length 1 (vector normalization). The chord
distance may also be calculated directly from
non-normalized data
This solves the problem of using spp. abundance
data.
76
Geodesic Metric
The geodesic metric is a transformation of the
chord procedure. It measures the length of the
arc at the surface of the hypersphere of unit
radius
In the numerical example we did, pairs of sites
(x1, x2) and (x2, x3), with no species in common
are at an angle of 90º, whereas pairs of sites
(x1, x2), which share two of the three species,
are at a smaller angle (88º).
77
Mahalanobis Distance
Mahalonobis (1936) developed a generalized
distance that takes in to account the
correlations among descriptors and is independent
of the scales of the various descriptors. This
measure computes the distance between two points
in a space whose axes are not necessarily
orthogonal. In practice, the Mahalanobis
generalized distance is only used for comparing
groups of sites.
78
Mahalanobis Distance
79
Mahalanobis Distance
In other words,
Where S1 and S2 are the dispersion matrices for
each of the two groups. Whereas d-bar measures
the difference between the p-dimensional means of
the two groups (p descriptors), V takes into
account the covariance among descriptors.
80
Mahalanobis Distance
The nice feature of this latter method is that
the result can be tested for significance. One
must first meet the assumption of matrix
homogeneity by applying Kullbacks test
with df (g-1)m(m1)/2, nj the number of objects
in the group, and V is the determinant of the
pooled within-group dispersion matrix of group j.
81
Mahalanobis Distance - Testing for Significance -
To perform the test of significance, the
generalized distance is transformed into
Hotellings T2 (1931) statistic
Then compute the appropriate F-statistic as
With df p, n1 n2 - (p 1)
82
Manhattan Metric
The Manhattan metric, city-block metric, or
taxicab metric all refer to the same distance
measure. It refers to the fact, that for two
descriptors, the distance between two sites is
the distance on the abcissa plus the distance on
the ordinate (much like the orthogonal distances
traveled by taxicabs in NYC). This metric
presents the same problems with double zeros as
in ED and leads to the same paradox.
83
Mean Character Difference
The mean character difference was originally
proposed by Czekanowski, an anthropologist, in
1909
It has the advantage over D7 of not increasing
with the number of descriptors (p). It may be
used for species abundance analysis if you
exclude double zeros from the absolute value of
the differences in y by replacing with (p - no.
double-zeros).
84
Whittakers Index of Association
WIA is well adapted to species abundance data,
because each species is first transformed into a
fraction of the total number of individuals at
the site, before the subtraction
The difference is zero for a species when its
proportions are identical in the two sites.
85
Alternative to Whittakers Index
An identical result to the WIA is obtained by
computing, over all species, the sum of the
smallest fractions calculated for the two sites
86
Alternative to Manhattan Metric
Likewise, Australians Lance Williams (1967)
provide the Canberra metric as an alternative to
the Manhattan metric
A scaled version of D10 was devised by Clark
(1952)
87
Alternative to Manhattan Metric
Another index with some good properties, which is
related to D11, was developed by an
anthropologist under the name Coefficient of
Racial Likeness. Using this coefficient, it is
possible to measure a distance between groups of
sites, like with the Mahalanobis distance (D5),
but without eliminating the effect of
correlations among descriptors
where w1 w2 contain n1 n2, y-bar is mean of
descriptor j in group i, sij is the variance.
88
Chi-Square Metrics
The last group of common metrics are the ?2
distance measures. The most general form is
known as the ?2 metric. In order to calculate
the ?2 metric, the data matrix must first be
transformed into a matrix of conditional
probabilities. The elements of the matrix become
the new terms yij/yi where yi is the sum of the
frequencies in row i. An example may be the
easiest way to understand...
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Chi-Square Metric
10/80
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Chi-Square Metric
The distance between the first two rows of the
right-hand matrix could be computed using the
formula for Euclidean distance (D1), but, the
most abundant species would contribute
predominantly to the sum of squares. Instead,
the ?2 metric is computed using a weighted
expression
Where yj is the sum of the frequencies of the
column j. While this measure has no upper limit,
most values lt 1.
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Chi-Square Metric
For the numerical example, computation of D15
between the first two sites yields D15 (x1, x2)

0.015 NB The 4th species, which is absent
from the first two sites, cancels itself out
thus how ?2 metric deals with double-zeros.
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Chi-Square Distance
The ?2 distance (D16) is related to the ?2 metric
(D15). It differs from the metric in that the
terms of the sum of squares are divided by the
probability of each row in the table instead of
it absolute frequency. Thus,
The ?2 distance is the distance preserved in
correspondence analysis (CA), when computing
similarity between sites (as well see later).
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Hellinger Distance
The last distance measure in this category is the
Hellinger distance. This is often recommended
prior to a principal coordinates analysis (PCO)
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Q-mode Distance Coefficients Semimetrics
Some distance measures do not follow the fourth
property of metrics, i.e., the triangle
inequality axiom. As a consequence, they do
not permit a proper ordination of points in
Euclidean space. They may, however, be used for
ordination by PCO after correction for negative
eigenvalues. One of the first semimetrics was
derived from the Sørenson coefficient (S8) which
was used to form the nonmetric coefficient
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Percentage Difference
Among the measures for species abundance data,
the coefficients of Steinhaus (S17) and
Kulczynski (S18) are semimetrics when transformed
in to distances. In particular, D141-D17 was
first described by Odum (1950) and later by Bray
and Curtis (1957) who called it the percentage
difference
Contrary to the Canberra metric (D10),
differences between abundant species contribute
the same as rare species. This is often a
desirable property , particularly when using
normalized data.
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? Ecological Resemblance ?Mode of analysis
?Analytical spaces Association Coefficients
?Q-mode similarity coefficients ? Symmetrical
binary coefficients ? Asymmetrical binary
coefficients ? Symmetrical quantitative
coefficients ? Asymmetrical quantitative
coefficients ? Probabilistic coefficients ?
Q-mode distance coefficients ? Metric
distance ? Semimetrics R-mode coefficients
of dependence Non-abundance measures Species
abundance measures Choice of a coefficient
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R-mode Coefficients of Dependence
The main purpose of R-mode analysis is to
investigate the relationships among descriptors,
and are sometimes used in PCA or DA to order
objects. Most dependence coefficients are
amenable to statistical testing. For such
coefficients, it is thus possible to associate a
matrix or probabilities with the R-matrix, if
required by subsequent analyses. If you do
statistical testing, the data must follow all of
the regular assumptions for the data (e.g.,
normality, etc.).
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Descriptors Other Than Species Abundances
The resemblance between quantitative descriptors
can be computed using parametric measures of
dependence i.e., measures based on parameters of
the frequency distributions of descriptors. These
measures are the covariance and the Pearson
correlation coefficient. They can ONLY be
adapted to descriptors whose relationships are
linear.
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Covariance
Recall that the covariance between descriptors j
and k is computed from centered variables The
range of values of the covariance has no a priori
upper or lower limits. The variances and the
covariances among a group of descriptors form
their dispersion matrix S
Recall multiply matrix of centered data w/its
transpose.
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Correlation
Pearsons correlation coefficient rjk is their
covariance of descriptors j and k computed from
standardized variables. The coefficients of
correlations among a group of descriptors form
the correlation matrix R. Correlation
coefficients range in value from -1 to 1. The
significance of individual coefficients (i.e.,
Ho r 0) can be statistically tested.
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Correlation R vs. Q
Some authors have used Pearsons r for Q-mode
analyses after transposing the primary matrix.
There are, however, a number of objections to
doing this, some of which include (1) r is
dimensionless and may be hard to interpret (2)
In R-mode, the value of r remains unchanged after
rescaling, but may change dramatically in
Q-mode UPSHOT measures that are designed for
one mode of analysis should not be analyzed in
the other mode!
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Nonparametric Correlation
The resemblance between semi-quantitative
descriptors, and more generally between any pair
of ordered descriptors whose relationship is
monotonic may be determined using nonparametric
measures of dependence. Spearmans r (continuous
or ordinal variables) and Kendalls ? (ordinal
variables) are appropriate to use under these
circumstances, and like Pearsons r, can be
subjected to statistical testing.
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Species Abundances Biological Associations
Analyzing species abundance descriptors causes
the same problem in the R as in the Q mode what
to do with double-zeros? This problem surfaces
regularly in community data because biological
assemblages usually contain a small number of
dominant species and a large number of rare
species. The literature is replete with
incorrect approaches to this problem.
Double-zeros need to be neutralized or not
included in the analysis.
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Approaches to Minimizing the Double-Zero Problem
1) Eliminate less frequent species from the
primary data matrix. They will be of little use
in assessing ecological species associations. 2)
Eliminate all zeros from the comparisons by
declaring that zeros are missing values. 3)
Eliminate double-zeros only from the computation
of the correlation or covariance matrix (this
must generally be programmed separately). The
resulting dispersion matrix can then be directly
analyzed (e.g., PCA).
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Approaches to Minimizing the Double-Zero Problem
Note that this is not a full list of options.
For example, Correspondence Analysis (CA) is a
special form of PCA which preserves the ?2
distance (D16) instead of the Euclidean distance
(D1). Because D16 excludes double-zeros,
whereas D1 includes them, CA is usually better
adapted to the study of species associations than
is PCA.
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Other Approaches
Biological associations may also be defined on
the basis of co-occurrence of species instead of
the relationships between fluctuations in
abundances. In fact, quantitative data may not
accurately reflect the proportions of the various
species in the environment (usually because of
sampling or identification problems). There are
many approaches to this in the literature, but by
far, the most common is the 2 ? 2 frequency table.
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2 ? 2 Frequency Table
Species y1
Species y2
Where a and d are numbers of sites in which the
two species are present and absent, respectively
whereas b and c are the numbers of sites in which
only one of the two species is present n is the
total number of sites.
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Binary Coefficients
As already discussed, many binary coefficients
exclude double-zeros. Jaccards coefficient of
community (S7) has been popular
along with its corresponding distance measure
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Binary Coefficients
Dices coincidence index (S8) (a.k.a. Sørensons
coefficient) was in fact originally designed to
specifically study species associations
A more elaborate coefficient was proposed by
Fager McGowan (1963) to make minor corrections
to S14 (esp. for small sample sizes)
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Choice of a Coefficient
Given that multivariate statistics is
exploratory in nature, there are not the same
hard and fast rules as one might see in
inferential statistics. There are, however,
important guidelines. We have seen how the
choice of coefficient can have a major influence
on the outcome and interpretation of resemblance.
Thus, considerable care should be exercised in
choosing a resemblance coefficient. Please refer
to class handouts for selection criteria.
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OCCAS Analysis
One way of helping to assess resemblance
coefficients is to construct artificial data
representing contrasting situations that a S or D
value should be able to discriminate. OCCAS
(ordered comparison case series Hajdu 1981)
involves constructing just such a series,
corresponding to linear changes in the abundance
of two species along a simulated gradient. The
method is straightforward and easy to apply. In
order for a coefficient to perform well, it MUST
provide a linear result. Gower and Legendre
(1986) used this approach to evaluate 15 binary
coefficients and 10 coefficients for quantitative
data.
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OCCAS Analysis -Example-
Consider two species. Site 1 has frequencies
were y11 100 and y12 0 Site 2 has
frequencies y21 50 and then y22 was varied from
10 to 120, in steps of 10. The results for
three coefficients are
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Calculating Similarity Matrices with SAS
Note that most pre-packaged software apps
constrain the number and type of coefficients
that you are able to use (some support as few as
2 options!). The availability of software should
not be the primary driving force in your
selection of coefficients! SAS, while having a
steep learning curve, is the premier tool for
biostatistical analysis. Lets look at an
example on constructing a similarity matrix using
Jaccards coefficient (S7).
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Results SAS Example
SAS Output Jaccard S7 hemi-matrix
When you are first learning SAS, use another
program to verify your results (e.g., MVSP used
here).
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The End!
(Of resemblance coefficients. Next, what to do
with them...)
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