SlideShare a Scribd company logo
1 of 5
Download to read offline
ISSN: 2317-0840
A cophenetic correlation coefficient for the modified Tocher’s method
Anderson R. Silva1†, Carlos T. S. Dias2, Paulo R. Cecon3, Jaqueline A. Raminelli1, M´ario
Puiatti4
1Ph.D stundet in Statistics and Agronomic Experimentation, ESALQ/University of S˜ao Paulo, Piracicaba, SP,
Brazil.
2LCE - ESALQ/University of S˜ao Paulo, Piracicaba, SP, Brazil.
3DET/University of Vic¸osa, Vic¸osa, MG, Brazil.
4DFT/University of Vic¸osa, Vic¸osa, MG, Brazil.
Abstract: The cophenetic correlation coefficient has usually been taken as a measure of clustering con-
sistence. However, its use has been restricted for hierarchical methods, at which is possible to obtain a
cophenetic matrix. Nevertheless, Silva and Dias (2013) have proposed a simple algorithm to compute
the cophenetic matrix for the original Tocher’s method. Following the premise at which cophenetic va-
lues can be obtained even by ordination methods, the goal of this work is to extend that algorithm for
computing the cophenetic matrix in cluster analysis performed via modified Tocher’s method and then
to estimate the cophenetic correlation. To illustrate the procedure, we used two measure of distance: the
squared generalized Mahalanobis and the Euclidean distance, based on six morphological characters
of garlic cultivars. We performed comparisons of outcomes obtained with two hierarchical methods:
Ward’s algorithm and the average linkage. As expected, most of our results are according with those
found by Silva and Dias (2013). The clustering consistence of agglomerative methods and the original
and modified Tocher’s can be evaluated by using a criterion in common, the correlation between original
and cophenetic distances.
Keywords: cluster analysis; clustering consistence; optimization methods.
Resumo: A correlac¸˜ao cofen´etica ´e comumente tomada como uma medida da consistˆencia do padr˜ao de
agrupamento. Entretanto, seu uso tem sido restrito aos m´etodos hier´arquicos, dos quais se obt´em uma
matriz cofen´etica. N˜ao obstante, Silva e Dias (2013) propuseram um algoritmo simples para computar
a matriz cofen´etica para o m´etodo original de Tocher. Seguindo a premissa na qual valores cofen´eticos
podem ser obtidos mesmo por m´etodos de ordenac¸˜ao, o objetivo deste trabalho ´e estender esse algo-
ritmo de modo `a obter uma matriz cofen´etica a partir de agrupamento realizado via m´etodo de Tocher
modificado, permitindo assim o c´alculo da correlac¸˜ao cofen´etica. Para ilustrar a obtenc¸˜ao da matriz co-
fen´etica proposta foram utilizadas duas matrizes de dissimilaridade, obtidas com a distˆancia quadr´atica
generalizada de Mahalanobis e com a distˆancia euclidiana entre dezessete cultivares de alho, com base
em seis caracteres morfol´ogicos. Comparac¸˜oes de resultados obtidos com dois m´etodos hier´arquicos
(Ward e ligac¸˜ao m´edia) foram feitas. Como esperado, os resultados obtidos s˜ao concordantes com os
encontrados por Silva e Dias (2013). Comparac¸˜oes entre agrupamentos feitos com m´etodos hier´arquicos
aglomerativos, com o m´etodo de Tocher e Tocher modificado podem ser realizadas utilizando um crit´erio
em comum, a correlac¸˜ao entre distˆancias originais e cofen´eticas.
Palavras-chave: an´alise de agrupamento; consistˆencia do agrupamento; m´etodos de otimizac¸˜ao.
†Corresponding author: ar.silva@usp.br.
Sigmae, Alfenas, v.2, n.3, p. 85-89. 2013.
Silva et al. (2013) 86
Introduction
The Tocher optimization clustering method (RAO, 1952) allows one to stablish mutually clusters
by using only one clustering criterion, which minimizes the average distance within and maximizes the
average distance between clusters. Vasconcelos et al. (2007) have proposed modifying the original
method, making it sequential (modified Tocher) instead of simultaneous. This new procedure does not
have only one clustering criterion. Considering the original one, the authors stated that the modified
method has the following advantage: the objects already clustered do not influence the clustering process
anymore.
Evaluations of clustering outcomes obtained with Tocher and modified Tocher have been done based
on the outcomes of other clustering methods, including ordination techniques that, sometimes, became
impratical due to the large number of variables and objects. On the other hand, in hierarchical clustering
algorithms, the correlation between the elements of the original distance matrix and those from the
matrix obtained by the phenogram, the cophenetic matrix, is usually taken as an evaluation measure of
the clustering consistence. Such a measure is known as the cophenetic correlation coefficient, proposed
by Sokal and Rohlf (1962) to be used as a representativeness measurement of the distance matrix by the
corresponding clustering.
Nevertheless, Silva and Dias (2013) have proposed a simple algorithm to compute the cophenetic
matrix for the simultaneous (original) Tocher’s method. Their approach is based on the average distances
within and between the clusters.
Following the Sneath and Sokal (1973) premise at which cophenetic values can be obtained even
by ordination methods, the goals of this work are twofold: a) to determine the cophenetic matrix from
clustering performed via modified Tocher’s method based on the approach presented by Silva and Dias
(2013) and b) to estimate the cophenetic correlation coefficient.
Methods
The modified Tocher’s method operates over a matrix of distances between objects. To illustrate the
obtation of the proposed cophenetic matrix we used two distance matrices, determined with the squared
generalized Mahalanobis and with the Euclidean distances between 17 garlic cultivars, based on six
morphological characters, in a study of genetic divergence carried out by Silva (2012).
We applied the modified Tocher’s method to those distance matrices and the clustering outcomes
(Table 1) were also used for determining the corresponding cophenetic matrices.
Tabela 1: Clusters of 17 garlic cultivars.
Cluster Cultivar(a) Cultivar(b)
1 8, 9, 12, 4, 10, 2, 7, 15 8, 9, 4, 10, 2, 12, 11
2 1, 6, 14 7, 15, 17, 6, 1, 14
3 11, 13 3, 5, 16
4 3, 5, 16 13
5 17 –
Clusters formed based on (a) Mahalanobis distances and (b) Euclidean distances.
Our propose for the modified Tocher’s method is to determine the cophenetic matrix from the average
distances within and between clusters. Thus, the average distance within the k-th cluster is calculated by
averaging the pairwise distances between objects into this cluster, according to the expression (eq. 1):
dk =
2
nk(nk −1)
nk−1
∑
i=1
nk
∑
j>i
di,j, ∀i = j, nk ≥ 2, (1)
where nk is the number of objects into the k-th cluster, di,j is the distance between the i-th and the j-th
objects located at the k-th cluster. Obviously nk = 1 ⇒ dk = 0.
Sigmae, Alfenas, v.2, n.3, p. 85-89. 2013.
Silva et al. (2013) 87
The average distance between the k-th and the k -th clusters is calculated by averaging all crossed
pairs of distances between objects of both clusters involved, according to the expression (eq. 2):
dk,k =
1
nk ×nk
nk
∑
i=1
nk
∑
j=1
di,j, ∀k = k , (2)
where nk and nk are, respectively, the number of objects into the k-th and k -th cluster, di,j is the distance
between the i-th object into the k-th cluster and the j-th object into the k -th cluster. Obviously, nk =
nk = 1 ⇒ dk,k = di,j.
For illustrating, we draw cluster diagrams to represent the relationships of the average distances
within and between clustersi (Figure 1). For example, based on Mahalanobis distance, the cophenetic
distance between cultivars 8 and 9 is simply the average distance within cluster 1, i.e., d8,9 = 1,75. On the
other hand, the cophenetic distance between cultivars 8 and 11 is the average distance between clusters
1 and 3, i.e., d8,11 = 3,26.
Figura 1: Diagrams of cluster obtaned by the modified Tocher’s method representing the relationship of
average distances within and between clusters based on (a) the squared generalized Mahalanobis distance
and (b) the Euclidean distance.
After building the cophenetic matrices, we calculated the correlations between the elements of each
original distance matrix and its respective elements of the respective cophenetic matrix.
For comparing results, we also have peformed hirarchical clustering with the following methods:
Ward’s algorithm and average linkage (UPGMA). The cophenetic correlation for these methods were
calculated too.
The analyses were performed by using the softwares Genes version 2009.7.0 (CRUZ, 2006) and R
version 3.0.2 (R CORE TEAM, 2013). The hierarchical clustering were performed with the function
hclust() and the respective cophenetic matrices with the function cophenetic(). The modified Tocher
clustering were performed with the module Multivariate analysis of the software Genes and the proposed
cophenetic matrix was computed by using the function coph.tocher() of the package biotools version 1.1
(SILVA, 2014).
Results and discussion
Figure 2 shows that the cophenetic matrix obtained with the modified Tocher’s method has synthe-
sized reliably the original distances. Besides that, the cophenetic distances tend to keep the original
iThe R package biotools (Silva, 2014) contains a function called distClust() that can be used to compute the average
distances within and between clusters.
Sigmae, Alfenas, v.2, n.3, p. 85-89. 2013.
Silva et al. (2013) 88
distance scale, once they use the average values of the original distances.
q
q
q
q
q
qq q q
q
q
q
q
q
q
q
q
q
q
q
qqqq
q
q
q
q
q
q
q
q
q
q
qq qq
q
q
q
q
q
q
q
q
q
qqqq
q
q
q
q
q
q
q
q
qq qq
q
q
q
q
q
q
q
q q qq
q
q
q
q
q
q
q
qqq
q
q
q
q
q
q
q
q q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
0 2 4 6 8 10 12
2
4
6
8
Modified Tocher (r = 0.88)
Original distances
Copheneticdistances
q
q
q
q
q
qq q q qq q
q
q
q
q
q
q
qq
q
qq
q
q
q
q
qq qq q
q
q
qq qqq q q
q qq q
qq
q
qq
q
q
q
q
qq qq
q
qq qqq q q
q qq q
q q qq qq q
q
q
q
q
qq
q
q
q
q
qq qq
q
q
q
q
q
qq qq
q
q
q
q
qq qq
q
q
q
qq qq
q
q
qq qq
q
qq qq qq qq
q
q
q q
q
q
0 2 4 6 8 10 12
0
5
10
15
20
25
Ward (r = 0.59)
Original distancesCopheneticdistances
q
q
q
q
q
qq q q qq q
q
q
q
q q
q
qq
q
qq
q
q
q
q
q
q
q
q
q
q
q
qq qqq q q
q
q
q
q qq
q
qq
q
q
q
q
q
q
q
q
q
qq qqq q q
q
q
q
qq q qq qq q
q
q
q
q
qqq
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
qq
q
q
q
q
q
q
q
q
q
q
q q
q
q
0 2 4 6 8 10 12
0
1
2
3
4
5
6
Average linkage (r = 0.73)
Original distances
Copheneticdistances
q
q
q
q
q q
qqq qq
q
qq
q
q
q
q
q qq
qqq qq
q
q qq qq
q
qq
qqqq q
q
q q
q
q
q qq
qqq qq
q
qq qq
qq
qqqq q
q
q q
q
q
q
qqq qq
q
qq
q
q
qqq qq
q
qq
q
q
q q qq
q
qq qq
q qq
q
qq qq
qq
q
qq qq
q
q
q qq q
q
q q q q
q q
q
q
q
q
q
q
q
q
1 2 3 4 5 6 7
2
3
4
5
6
Modified Tocher (r = 0.79)
Original distances
Copheneticdistances
q
q
q
q
q q
qqq qq q
q
q
q
q
q
q
q
qq
qq
q
qq q
q
q
q
q
q
q
qq
qqqq q q
q
q
q
q
q
qq
qq
q
qq q
q
q
q
q qq
qqqq qq
q
q
q
q
q
qqq qq qq
q
q
q
qqq qq qq
q
q
q
q
q
qq q
q
q
q
q
q
qq q
q
q
q
q
qq q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
q
qq
q
q q
q
q
1 2 3 4 5 6 7
2
4
6
8
10
12
Ward (r = 0.63)
Original distances
Copheneticdistances
q qq q
q q
qqq qq q
q
q
q
q
q
q
q
qq
qq
q
qq
q
q q
q
q
q
q
qq
qqqq q q
q q
q
q
q
qq
qq
q
qq
q
qq
q
q qq
qqqq qq
q q
q
q
q
qqq qq q
q
q
q
q
qqq qq q
q
q
q
q
q
q qq
q
qq
q
q
q qq
q
qq
q
q
qq
q
qq
q
q
q
q
q q
q
q
q
q q
q
qq q
q
q
q
q
q
q
q
q
1 2 3 4 5 6 7
1.0
1.5
2.0
2.5
3.0
3.5
4.0
Averege linkage (r = 0.72)
Original distances
Copheneticdistances
(a)
(b)
Figura 2: Shepard diagrams for association of original and cophenetic distances based on (a) the squared
generalized Mahalanobis distance and (b) the Euclidean distance.
Cophenetic correlations obtained by the Tocher (0.88 with Mahalanobis distances and 0.79 with
Euclidean distances) were, even, higher than those obtained by the average linkage method (0.73 with
Mahalanobis and 0.72 with Euclidean), even though the numbers of actual distances involved on the
calculation of the proposed matrix (15 with Mahalanobis and 10 with Euclidean) are less than those used
on the hierarchical methods (16 for both).
Ward’s algorithm has presented weak linear relationship, which is an expected result since this
method itself tends to show high values for the last entities merge levels, and the Pearson’s coeffici-
ent is sensitive to outliers.
Conclusions
Most of our results are according with those found by Silva and Dias (2013), and the main conclusi-
ons are:
1. The construction of the cophenetic matrix for the modified Tocher’s method depends directly on
the number of groups.
2. Comparisons between clustering done with agglomerative hierarchical methods, Tocher and mo-
dified Tocher can be performed by using a single criterion: the correlation between cophenetic and
original distances.
3. The proposed cophenetic matrix can be computed by computational algorithms using the clustering
outcome of the modified Tocher’s method and the matrix of cluster average distances.
Sigmae, Alfenas, v.2, n.3, p. 85-89. 2013.
Silva et al. (2013) 89
Acknowledgements
To Coordenac¸˜ao de Aperfeic¸oamento de Pessoal de N´ıvel Superior (CAPES, Brazil) for granting the
scholarship for the first author.
References
CRUZ, C.D. Programa Genes: Biometria. Vic¸osa: Editora UFV, 2006. 382p.
R CORE TEAM. R: A language and environment for statistical computing. R Foundation for Statistical
Computing, Vienna, Austria. 2013. ISBN 3-900051-07-0, URL http://www.R-project.org/.
RAO, R.C. Advanced statistical methods in biometric research. New York: John Wiley and Sons, 1952.
390p.
SILVA, A.R. M´etodos de agrupamento: avaliac¸˜ao e aplicac¸˜ao ao estudo de divergˆencia gen´etica em
acessos de alho. 2012. 67p. Dissertac¸˜ao (Mestrado em Estat´ıstica Aplicada e Biometria), Universidade
Federal de Vic¸osa, Vic¸osa, 2012.
SILVA, A.R. biotools: Tools for Biometry and Applied Statistics in Agricultural Science. R package
version 1.1. 2014. URL http://CRAN.R-project.org/package=biotools.
SILVA, A.R.; DIAS, C.T.S. A cophenetic correlation coefficient for Tocher’s method. Pesquisa
Agropecu´aria Brasileira, v.48, n.6, p.589-596, 2013.
SNEATH, P.H.A.; SOKAL, R.R. Numerical taxonomy: the principles and practice of numerical
classification. San Francisco: W.H. Freeman and Company, 1973. 573p.
SOKAL, R.R.; ROHLF, F.J. The comparison of dendrograms by objective methods. Taxon, v.11, n.2,
p.33-40, 1962.
VASCONCELOS, E.S.; CRUZ, C.D.; BHERING, L.L.; RESENDE J ´UNIOR, M.F.R. M´etodo
alternativo para an´alise de agrupamento. Pesquisa Agropecu´aria Brasileira, v.42, n.10, p.1421-1428,
2007.
Sigmae, Alfenas, v.2, n.3, p. 85-89. 2013.

More Related Content

What's hot

A generalized bernoulli sub-ODE Method and Its applications for nonlinear evo...
A generalized bernoulli sub-ODE Method and Its applications for nonlinear evo...A generalized bernoulli sub-ODE Method and Its applications for nonlinear evo...
A generalized bernoulli sub-ODE Method and Its applications for nonlinear evo...inventy
 
Asymptotic Stability of Quaternion-based Attitude Control System with Saturat...
Asymptotic Stability of Quaternion-based Attitude Control System with Saturat...Asymptotic Stability of Quaternion-based Attitude Control System with Saturat...
Asymptotic Stability of Quaternion-based Attitude Control System with Saturat...IJECEIAES
 
Some new exact Solutions for the nonlinear schrödinger equation
Some new exact Solutions for the nonlinear schrödinger equationSome new exact Solutions for the nonlinear schrödinger equation
Some new exact Solutions for the nonlinear schrödinger equationinventy
 
Quark Model Three Body Calculations for the Hypertriton Bound State
Quark Model Three Body Calculations for the Hypertriton Bound StateQuark Model Three Body Calculations for the Hypertriton Bound State
Quark Model Three Body Calculations for the Hypertriton Bound StateIOSR Journals
 
Bound- State Solution of Schrodinger Equation with Hulthen Plus Generalized E...
Bound- State Solution of Schrodinger Equation with Hulthen Plus Generalized E...Bound- State Solution of Schrodinger Equation with Hulthen Plus Generalized E...
Bound- State Solution of Schrodinger Equation with Hulthen Plus Generalized E...ijrap
 
On 1 d fractional supersymmetric theory
  On 1 d fractional supersymmetric theory  On 1 d fractional supersymmetric theory
On 1 d fractional supersymmetric theoryAlexander Decker
 
paper 3 physics form 4
paper 3 physics form 4 paper 3 physics form 4
paper 3 physics form 4 astchr148
 

What's hot (11)

A generalized bernoulli sub-ODE Method and Its applications for nonlinear evo...
A generalized bernoulli sub-ODE Method and Its applications for nonlinear evo...A generalized bernoulli sub-ODE Method and Its applications for nonlinear evo...
A generalized bernoulli sub-ODE Method and Its applications for nonlinear evo...
 
Asymptotic Stability of Quaternion-based Attitude Control System with Saturat...
Asymptotic Stability of Quaternion-based Attitude Control System with Saturat...Asymptotic Stability of Quaternion-based Attitude Control System with Saturat...
Asymptotic Stability of Quaternion-based Attitude Control System with Saturat...
 
Some new exact Solutions for the nonlinear schrödinger equation
Some new exact Solutions for the nonlinear schrödinger equationSome new exact Solutions for the nonlinear schrödinger equation
Some new exact Solutions for the nonlinear schrödinger equation
 
Quark Model Three Body Calculations for the Hypertriton Bound State
Quark Model Three Body Calculations for the Hypertriton Bound StateQuark Model Three Body Calculations for the Hypertriton Bound State
Quark Model Three Body Calculations for the Hypertriton Bound State
 
Numerical Solution of Oscillatory Reaction-Diffusion System of $\lambda-omega...
Numerical Solution of Oscillatory Reaction-Diffusion System of $\lambda-omega...Numerical Solution of Oscillatory Reaction-Diffusion System of $\lambda-omega...
Numerical Solution of Oscillatory Reaction-Diffusion System of $\lambda-omega...
 
Bound- State Solution of Schrodinger Equation with Hulthen Plus Generalized E...
Bound- State Solution of Schrodinger Equation with Hulthen Plus Generalized E...Bound- State Solution of Schrodinger Equation with Hulthen Plus Generalized E...
Bound- State Solution of Schrodinger Equation with Hulthen Plus Generalized E...
 
On 1 d fractional supersymmetric theory
  On 1 d fractional supersymmetric theory  On 1 d fractional supersymmetric theory
On 1 d fractional supersymmetric theory
 
201977 1-1-3-pb
201977 1-1-3-pb201977 1-1-3-pb
201977 1-1-3-pb
 
DIMENSIONAL ANALYSIS (Lecture notes 08)
DIMENSIONAL ANALYSIS (Lecture notes 08)DIMENSIONAL ANALYSIS (Lecture notes 08)
DIMENSIONAL ANALYSIS (Lecture notes 08)
 
paper 3 physics form 4
paper 3 physics form 4 paper 3 physics form 4
paper 3 physics form 4
 
maxent-2016
maxent-2016maxent-2016
maxent-2016
 

Viewers also liked

Passive voice
Passive voicePassive voice
Passive voiceletir21
 
Seo Traffic Engine : Seo off page
Seo Traffic Engine : Seo off page Seo Traffic Engine : Seo off page
Seo Traffic Engine : Seo off page Jitendra Patel
 
Madeleine peyroux
Madeleine peyrouxMadeleine peyroux
Madeleine peyrouxMarta Lokuu
 
Historical Studies intro (3.2.2015)
Historical Studies intro (3.2.2015)Historical Studies intro (3.2.2015)
Historical Studies intro (3.2.2015)TAMALA MANDA
 
математиката в индия
математиката в индияматематиката в индия
математиката в индияgkojuharov
 
математиката
математикатаматематиката
математикатаgkojuharov
 
Aocc technology smackdown!
Aocc technology smackdown! Aocc technology smackdown!
Aocc technology smackdown! saranwilliams
 
How changed
How changedHow changed
How changeds1180084
 
On page seo optimization seo traffic engine
On page seo optimization   seo traffic engineOn page seo optimization   seo traffic engine
On page seo optimization seo traffic engineJitendra Patel
 
プレゼンテーション3
プレゼンテーション3プレゼンテーション3
プレゼンテーション3s1180084
 
недиана
недиананедиана
недианаgkojuharov
 
накои интересни понятия в математиката
накои интересни понятия в математикатанакои интересни понятия в математиката
накои интересни понятия в математикатаgkojuharov
 

Viewers also liked (20)

Amazon
AmazonAmazon
Amazon
 
Eng1
Eng1Eng1
Eng1
 
Passive voice
Passive voicePassive voice
Passive voice
 
Seo Traffic Engine : Seo off page
Seo Traffic Engine : Seo off page Seo Traffic Engine : Seo off page
Seo Traffic Engine : Seo off page
 
Madeleine peyroux
Madeleine peyrouxMadeleine peyroux
Madeleine peyroux
 
Rakuten
RakutenRakuten
Rakuten
 
Historical Studies intro (3.2.2015)
Historical Studies intro (3.2.2015)Historical Studies intro (3.2.2015)
Historical Studies intro (3.2.2015)
 
математиката в индия
математиката в индияматематиката в индия
математиката в индия
 
математиката
математикатаматематиката
математиката
 
Plt
PltPlt
Plt
 
Aocc technology smackdown!
Aocc technology smackdown! Aocc technology smackdown!
Aocc technology smackdown!
 
How changed
How changedHow changed
How changed
 
On page seo optimization seo traffic engine
On page seo optimization   seo traffic engineOn page seo optimization   seo traffic engine
On page seo optimization seo traffic engine
 
Officegetstarted
OfficegetstartedOfficegetstarted
Officegetstarted
 
Storyboard bg3eso
Storyboard bg3esoStoryboard bg3eso
Storyboard bg3eso
 
Plt
PltPlt
Plt
 
プレゼンテーション3
プレゼンテーション3プレゼンテーション3
プレゼンテーション3
 
Ch8
Ch8Ch8
Ch8
 
недиана
недиананедиана
недиана
 
накои интересни понятия в математиката
накои интересни понятия в математикатанакои интересни понятия в математиката
накои интересни понятия в математиката
 

Similar to 336 1170-1-pb tocher anderson

Blind Source Separation of Super and Sub-Gaussian Signals with ABC Algorithm
Blind Source Separation of Super and Sub-Gaussian Signals with ABC AlgorithmBlind Source Separation of Super and Sub-Gaussian Signals with ABC Algorithm
Blind Source Separation of Super and Sub-Gaussian Signals with ABC AlgorithmIDES Editor
 
A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES ...
A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES ...A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES ...
A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES ...ijcseit
 
A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES
A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES
A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES ijcseit
 
A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES ...
A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES ...A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES ...
A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES ...ijcseit
 
Combined cosine-linear regression model similarity with application to handwr...
Combined cosine-linear regression model similarity with application to handwr...Combined cosine-linear regression model similarity with application to handwr...
Combined cosine-linear regression model similarity with application to handwr...IJECEIAES
 
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATIONA NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATIONmathsjournal
 
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATIONA NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATIONmathsjournal
 
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATIONA NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATIONmathsjournal
 
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATIONA NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATIONmathsjournal
 
Combination of Similarity Measures for Time Series Classification using Genet...
Combination of Similarity Measures for Time Series Classification using Genet...Combination of Similarity Measures for Time Series Classification using Genet...
Combination of Similarity Measures for Time Series Classification using Genet...Deepti Dohare
 
MK-Prototypes: A Novel Algorithm for Clustering Mixed Type Data
MK-Prototypes: A Novel Algorithm for Clustering Mixed Type  Data MK-Prototypes: A Novel Algorithm for Clustering Mixed Type  Data
MK-Prototypes: A Novel Algorithm for Clustering Mixed Type Data IJMER
 
A NEW STUDY OF TRAPEZOIDAL, SIMPSON’S1/3 AND SIMPSON’S 3/8 RULES OF NUMERICAL...
A NEW STUDY OF TRAPEZOIDAL, SIMPSON’S1/3 AND SIMPSON’S 3/8 RULES OF NUMERICAL...A NEW STUDY OF TRAPEZOIDAL, SIMPSON’S1/3 AND SIMPSON’S 3/8 RULES OF NUMERICAL...
A NEW STUDY OF TRAPEZOIDAL, SIMPSON’S1/3 AND SIMPSON’S 3/8 RULES OF NUMERICAL...mathsjournal
 
PSF_Introduction_to_R_Package_for_Pattern_Sequence (1)
PSF_Introduction_to_R_Package_for_Pattern_Sequence (1)PSF_Introduction_to_R_Package_for_Pattern_Sequence (1)
PSF_Introduction_to_R_Package_for_Pattern_Sequence (1)neeraj7svp
 
Applied Mathematics and Sciences: An International Journal (MathSJ)
Applied Mathematics and Sciences: An International Journal (MathSJ)Applied Mathematics and Sciences: An International Journal (MathSJ)
Applied Mathematics and Sciences: An International Journal (MathSJ)mathsjournal
 
Imagethresholding
ImagethresholdingImagethresholding
Imagethresholdingananta200
 
A comparison of SIFT, PCA-SIFT and SURF
A comparison of SIFT, PCA-SIFT and SURFA comparison of SIFT, PCA-SIFT and SURF
A comparison of SIFT, PCA-SIFT and SURFCSCJournals
 
Accelerating materials property predictions using machine learning
Accelerating materials property predictions using machine learningAccelerating materials property predictions using machine learning
Accelerating materials property predictions using machine learningGhanshyam Pilania
 

Similar to 336 1170-1-pb tocher anderson (20)

Blind Source Separation of Super and Sub-Gaussian Signals with ABC Algorithm
Blind Source Separation of Super and Sub-Gaussian Signals with ABC AlgorithmBlind Source Separation of Super and Sub-Gaussian Signals with ABC Algorithm
Blind Source Separation of Super and Sub-Gaussian Signals with ABC Algorithm
 
A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES ...
A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES ...A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES ...
A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES ...
 
A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES
A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES
A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES
 
A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES ...
A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES ...A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES ...
A COMPARATIVE ANALYSIS OF PROGRESSIVE MULTIPLE SEQUENCE ALIGNMENT APPROACHES ...
 
Combined cosine-linear regression model similarity with application to handwr...
Combined cosine-linear regression model similarity with application to handwr...Combined cosine-linear regression model similarity with application to handwr...
Combined cosine-linear regression model similarity with application to handwr...
 
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATIONA NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
 
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATIONA NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
 
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATIONA NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
 
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATIONA NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
A NEW METHOD OF CENTRAL DIFFERENCE INTERPOLATION
 
Combination of Similarity Measures for Time Series Classification using Genet...
Combination of Similarity Measures for Time Series Classification using Genet...Combination of Similarity Measures for Time Series Classification using Genet...
Combination of Similarity Measures for Time Series Classification using Genet...
 
MK-Prototypes: A Novel Algorithm for Clustering Mixed Type Data
MK-Prototypes: A Novel Algorithm for Clustering Mixed Type  Data MK-Prototypes: A Novel Algorithm for Clustering Mixed Type  Data
MK-Prototypes: A Novel Algorithm for Clustering Mixed Type Data
 
Data Modelling
Data ModellingData Modelling
Data Modelling
 
A NEW STUDY OF TRAPEZOIDAL, SIMPSON’S1/3 AND SIMPSON’S 3/8 RULES OF NUMERICAL...
A NEW STUDY OF TRAPEZOIDAL, SIMPSON’S1/3 AND SIMPSON’S 3/8 RULES OF NUMERICAL...A NEW STUDY OF TRAPEZOIDAL, SIMPSON’S1/3 AND SIMPSON’S 3/8 RULES OF NUMERICAL...
A NEW STUDY OF TRAPEZOIDAL, SIMPSON’S1/3 AND SIMPSON’S 3/8 RULES OF NUMERICAL...
 
PSF_Introduction_to_R_Package_for_Pattern_Sequence (1)
PSF_Introduction_to_R_Package_for_Pattern_Sequence (1)PSF_Introduction_to_R_Package_for_Pattern_Sequence (1)
PSF_Introduction_to_R_Package_for_Pattern_Sequence (1)
 
Applied Mathematics and Sciences: An International Journal (MathSJ)
Applied Mathematics and Sciences: An International Journal (MathSJ)Applied Mathematics and Sciences: An International Journal (MathSJ)
Applied Mathematics and Sciences: An International Journal (MathSJ)
 
Imagethresholding
ImagethresholdingImagethresholding
Imagethresholding
 
A comparison of SIFT, PCA-SIFT and SURF
A comparison of SIFT, PCA-SIFT and SURFA comparison of SIFT, PCA-SIFT and SURF
A comparison of SIFT, PCA-SIFT and SURF
 
Accelerating materials property predictions using machine learning
Accelerating materials property predictions using machine learningAccelerating materials property predictions using machine learning
Accelerating materials property predictions using machine learning
 
O0447796
O0447796O0447796
O0447796
 
Dycops2019
Dycops2019 Dycops2019
Dycops2019
 

More from André Oliveira Souza

More from André Oliveira Souza (14)

Statistical computing with r estatistica - maria l. rizzo
Statistical computing with r   estatistica - maria l. rizzoStatistical computing with r   estatistica - maria l. rizzo
Statistical computing with r estatistica - maria l. rizzo
 
Cartilha de seguranca_sobre_pedofilia_orientacoes_aos_pais
Cartilha de seguranca_sobre_pedofilia_orientacoes_aos_paisCartilha de seguranca_sobre_pedofilia_orientacoes_aos_pais
Cartilha de seguranca_sobre_pedofilia_orientacoes_aos_pais
 
Sitema linear
Sitema linearSitema linear
Sitema linear
 
336 1170-1-pb tocher anderson
336 1170-1-pb  tocher anderson336 1170-1-pb  tocher anderson
336 1170-1-pb tocher anderson
 
336 1170-1-pb tocher anderson
336 1170-1-pb  tocher anderson336 1170-1-pb  tocher anderson
336 1170-1-pb tocher anderson
 
Olhar digital visualização de impressão novas regras da anatel sobre direi...
Olhar digital   visualização de impressão  novas regras da anatel sobre direi...Olhar digital   visualização de impressão  novas regras da anatel sobre direi...
Olhar digital visualização de impressão novas regras da anatel sobre direi...
 
Resolução nº 632, de 7 de março de 2014 portal de legislação da anatel (res...
Resolução nº 632, de 7 de março de 2014   portal de legislação da anatel (res...Resolução nº 632, de 7 de março de 2014   portal de legislação da anatel (res...
Resolução nº 632, de 7 de março de 2014 portal de legislação da anatel (res...
 
Mca025
Mca025Mca025
Mca025
 
V.a.d
V.a.dV.a.d
V.a.d
 
Apostila latex 2010
Apostila latex 2010Apostila latex 2010
Apostila latex 2010
 
Grfico por atributos
Grfico por atributosGrfico por atributos
Grfico por atributos
 
Ceq1
Ceq1Ceq1
Ceq1
 
Dados exemplo
Dados exemploDados exemplo
Dados exemplo
 
Negativos
NegativosNegativos
Negativos
 

Recently uploaded

1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdfQucHHunhnh
 
UGC NET Paper 1 Mathematical Reasoning & Aptitude.pdf
UGC NET Paper 1 Mathematical Reasoning & Aptitude.pdfUGC NET Paper 1 Mathematical Reasoning & Aptitude.pdf
UGC NET Paper 1 Mathematical Reasoning & Aptitude.pdfNirmal Dwivedi
 
ComPTIA Overview | Comptia Security+ Book SY0-701
ComPTIA Overview | Comptia Security+ Book SY0-701ComPTIA Overview | Comptia Security+ Book SY0-701
ComPTIA Overview | Comptia Security+ Book SY0-701bronxfugly43
 
Salient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functionsSalient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functionsKarakKing
 
Understanding Accommodations and Modifications
Understanding  Accommodations and ModificationsUnderstanding  Accommodations and Modifications
Understanding Accommodations and ModificationsMJDuyan
 
Google Gemini An AI Revolution in Education.pptx
Google Gemini An AI Revolution in Education.pptxGoogle Gemini An AI Revolution in Education.pptx
Google Gemini An AI Revolution in Education.pptxDr. Sarita Anand
 
Towards a code of practice for AI in AT.pptx
Towards a code of practice for AI in AT.pptxTowards a code of practice for AI in AT.pptx
Towards a code of practice for AI in AT.pptxJisc
 
Fostering Friendships - Enhancing Social Bonds in the Classroom
Fostering Friendships - Enhancing Social Bonds  in the ClassroomFostering Friendships - Enhancing Social Bonds  in the Classroom
Fostering Friendships - Enhancing Social Bonds in the ClassroomPooky Knightsmith
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfciinovamais
 
Micro-Scholarship, What it is, How can it help me.pdf
Micro-Scholarship, What it is, How can it help me.pdfMicro-Scholarship, What it is, How can it help me.pdf
Micro-Scholarship, What it is, How can it help me.pdfPoh-Sun Goh
 
Unit-V; Pricing (Pharma Marketing Management).pptx
Unit-V; Pricing (Pharma Marketing Management).pptxUnit-V; Pricing (Pharma Marketing Management).pptx
Unit-V; Pricing (Pharma Marketing Management).pptxVishalSingh1417
 
Sociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning ExhibitSociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning Exhibitjbellavia9
 
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptxMaritesTamaniVerdade
 
SKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptx
SKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptxSKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptx
SKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptxAmanpreet Kaur
 
Kodo Millet PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...
Kodo Millet  PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...Kodo Millet  PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...
Kodo Millet PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...pradhanghanshyam7136
 
This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.christianmathematics
 
Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...ZurliaSoop
 
General Principles of Intellectual Property: Concepts of Intellectual Proper...
General Principles of Intellectual Property: Concepts of Intellectual  Proper...General Principles of Intellectual Property: Concepts of Intellectual  Proper...
General Principles of Intellectual Property: Concepts of Intellectual Proper...Poonam Aher Patil
 
ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.MaryamAhmad92
 

Recently uploaded (20)

1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdf
 
UGC NET Paper 1 Mathematical Reasoning & Aptitude.pdf
UGC NET Paper 1 Mathematical Reasoning & Aptitude.pdfUGC NET Paper 1 Mathematical Reasoning & Aptitude.pdf
UGC NET Paper 1 Mathematical Reasoning & Aptitude.pdf
 
ComPTIA Overview | Comptia Security+ Book SY0-701
ComPTIA Overview | Comptia Security+ Book SY0-701ComPTIA Overview | Comptia Security+ Book SY0-701
ComPTIA Overview | Comptia Security+ Book SY0-701
 
Salient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functionsSalient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functions
 
Understanding Accommodations and Modifications
Understanding  Accommodations and ModificationsUnderstanding  Accommodations and Modifications
Understanding Accommodations and Modifications
 
Google Gemini An AI Revolution in Education.pptx
Google Gemini An AI Revolution in Education.pptxGoogle Gemini An AI Revolution in Education.pptx
Google Gemini An AI Revolution in Education.pptx
 
Towards a code of practice for AI in AT.pptx
Towards a code of practice for AI in AT.pptxTowards a code of practice for AI in AT.pptx
Towards a code of practice for AI in AT.pptx
 
Spatium Project Simulation student brief
Spatium Project Simulation student briefSpatium Project Simulation student brief
Spatium Project Simulation student brief
 
Fostering Friendships - Enhancing Social Bonds in the Classroom
Fostering Friendships - Enhancing Social Bonds  in the ClassroomFostering Friendships - Enhancing Social Bonds  in the Classroom
Fostering Friendships - Enhancing Social Bonds in the Classroom
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdf
 
Micro-Scholarship, What it is, How can it help me.pdf
Micro-Scholarship, What it is, How can it help me.pdfMicro-Scholarship, What it is, How can it help me.pdf
Micro-Scholarship, What it is, How can it help me.pdf
 
Unit-V; Pricing (Pharma Marketing Management).pptx
Unit-V; Pricing (Pharma Marketing Management).pptxUnit-V; Pricing (Pharma Marketing Management).pptx
Unit-V; Pricing (Pharma Marketing Management).pptx
 
Sociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning ExhibitSociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning Exhibit
 
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx
 
SKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptx
SKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptxSKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptx
SKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptx
 
Kodo Millet PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...
Kodo Millet  PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...Kodo Millet  PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...
Kodo Millet PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...
 
This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.
 
Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
 
General Principles of Intellectual Property: Concepts of Intellectual Proper...
General Principles of Intellectual Property: Concepts of Intellectual  Proper...General Principles of Intellectual Property: Concepts of Intellectual  Proper...
General Principles of Intellectual Property: Concepts of Intellectual Proper...
 
ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.
 

336 1170-1-pb tocher anderson

  • 1. ISSN: 2317-0840 A cophenetic correlation coefficient for the modified Tocher’s method Anderson R. Silva1†, Carlos T. S. Dias2, Paulo R. Cecon3, Jaqueline A. Raminelli1, M´ario Puiatti4 1Ph.D stundet in Statistics and Agronomic Experimentation, ESALQ/University of S˜ao Paulo, Piracicaba, SP, Brazil. 2LCE - ESALQ/University of S˜ao Paulo, Piracicaba, SP, Brazil. 3DET/University of Vic¸osa, Vic¸osa, MG, Brazil. 4DFT/University of Vic¸osa, Vic¸osa, MG, Brazil. Abstract: The cophenetic correlation coefficient has usually been taken as a measure of clustering con- sistence. However, its use has been restricted for hierarchical methods, at which is possible to obtain a cophenetic matrix. Nevertheless, Silva and Dias (2013) have proposed a simple algorithm to compute the cophenetic matrix for the original Tocher’s method. Following the premise at which cophenetic va- lues can be obtained even by ordination methods, the goal of this work is to extend that algorithm for computing the cophenetic matrix in cluster analysis performed via modified Tocher’s method and then to estimate the cophenetic correlation. To illustrate the procedure, we used two measure of distance: the squared generalized Mahalanobis and the Euclidean distance, based on six morphological characters of garlic cultivars. We performed comparisons of outcomes obtained with two hierarchical methods: Ward’s algorithm and the average linkage. As expected, most of our results are according with those found by Silva and Dias (2013). The clustering consistence of agglomerative methods and the original and modified Tocher’s can be evaluated by using a criterion in common, the correlation between original and cophenetic distances. Keywords: cluster analysis; clustering consistence; optimization methods. Resumo: A correlac¸˜ao cofen´etica ´e comumente tomada como uma medida da consistˆencia do padr˜ao de agrupamento. Entretanto, seu uso tem sido restrito aos m´etodos hier´arquicos, dos quais se obt´em uma matriz cofen´etica. N˜ao obstante, Silva e Dias (2013) propuseram um algoritmo simples para computar a matriz cofen´etica para o m´etodo original de Tocher. Seguindo a premissa na qual valores cofen´eticos podem ser obtidos mesmo por m´etodos de ordenac¸˜ao, o objetivo deste trabalho ´e estender esse algo- ritmo de modo `a obter uma matriz cofen´etica a partir de agrupamento realizado via m´etodo de Tocher modificado, permitindo assim o c´alculo da correlac¸˜ao cofen´etica. Para ilustrar a obtenc¸˜ao da matriz co- fen´etica proposta foram utilizadas duas matrizes de dissimilaridade, obtidas com a distˆancia quadr´atica generalizada de Mahalanobis e com a distˆancia euclidiana entre dezessete cultivares de alho, com base em seis caracteres morfol´ogicos. Comparac¸˜oes de resultados obtidos com dois m´etodos hier´arquicos (Ward e ligac¸˜ao m´edia) foram feitas. Como esperado, os resultados obtidos s˜ao concordantes com os encontrados por Silva e Dias (2013). Comparac¸˜oes entre agrupamentos feitos com m´etodos hier´arquicos aglomerativos, com o m´etodo de Tocher e Tocher modificado podem ser realizadas utilizando um crit´erio em comum, a correlac¸˜ao entre distˆancias originais e cofen´eticas. Palavras-chave: an´alise de agrupamento; consistˆencia do agrupamento; m´etodos de otimizac¸˜ao. †Corresponding author: ar.silva@usp.br. Sigmae, Alfenas, v.2, n.3, p. 85-89. 2013.
  • 2. Silva et al. (2013) 86 Introduction The Tocher optimization clustering method (RAO, 1952) allows one to stablish mutually clusters by using only one clustering criterion, which minimizes the average distance within and maximizes the average distance between clusters. Vasconcelos et al. (2007) have proposed modifying the original method, making it sequential (modified Tocher) instead of simultaneous. This new procedure does not have only one clustering criterion. Considering the original one, the authors stated that the modified method has the following advantage: the objects already clustered do not influence the clustering process anymore. Evaluations of clustering outcomes obtained with Tocher and modified Tocher have been done based on the outcomes of other clustering methods, including ordination techniques that, sometimes, became impratical due to the large number of variables and objects. On the other hand, in hierarchical clustering algorithms, the correlation between the elements of the original distance matrix and those from the matrix obtained by the phenogram, the cophenetic matrix, is usually taken as an evaluation measure of the clustering consistence. Such a measure is known as the cophenetic correlation coefficient, proposed by Sokal and Rohlf (1962) to be used as a representativeness measurement of the distance matrix by the corresponding clustering. Nevertheless, Silva and Dias (2013) have proposed a simple algorithm to compute the cophenetic matrix for the simultaneous (original) Tocher’s method. Their approach is based on the average distances within and between the clusters. Following the Sneath and Sokal (1973) premise at which cophenetic values can be obtained even by ordination methods, the goals of this work are twofold: a) to determine the cophenetic matrix from clustering performed via modified Tocher’s method based on the approach presented by Silva and Dias (2013) and b) to estimate the cophenetic correlation coefficient. Methods The modified Tocher’s method operates over a matrix of distances between objects. To illustrate the obtation of the proposed cophenetic matrix we used two distance matrices, determined with the squared generalized Mahalanobis and with the Euclidean distances between 17 garlic cultivars, based on six morphological characters, in a study of genetic divergence carried out by Silva (2012). We applied the modified Tocher’s method to those distance matrices and the clustering outcomes (Table 1) were also used for determining the corresponding cophenetic matrices. Tabela 1: Clusters of 17 garlic cultivars. Cluster Cultivar(a) Cultivar(b) 1 8, 9, 12, 4, 10, 2, 7, 15 8, 9, 4, 10, 2, 12, 11 2 1, 6, 14 7, 15, 17, 6, 1, 14 3 11, 13 3, 5, 16 4 3, 5, 16 13 5 17 – Clusters formed based on (a) Mahalanobis distances and (b) Euclidean distances. Our propose for the modified Tocher’s method is to determine the cophenetic matrix from the average distances within and between clusters. Thus, the average distance within the k-th cluster is calculated by averaging the pairwise distances between objects into this cluster, according to the expression (eq. 1): dk = 2 nk(nk −1) nk−1 ∑ i=1 nk ∑ j>i di,j, ∀i = j, nk ≥ 2, (1) where nk is the number of objects into the k-th cluster, di,j is the distance between the i-th and the j-th objects located at the k-th cluster. Obviously nk = 1 ⇒ dk = 0. Sigmae, Alfenas, v.2, n.3, p. 85-89. 2013.
  • 3. Silva et al. (2013) 87 The average distance between the k-th and the k -th clusters is calculated by averaging all crossed pairs of distances between objects of both clusters involved, according to the expression (eq. 2): dk,k = 1 nk ×nk nk ∑ i=1 nk ∑ j=1 di,j, ∀k = k , (2) where nk and nk are, respectively, the number of objects into the k-th and k -th cluster, di,j is the distance between the i-th object into the k-th cluster and the j-th object into the k -th cluster. Obviously, nk = nk = 1 ⇒ dk,k = di,j. For illustrating, we draw cluster diagrams to represent the relationships of the average distances within and between clustersi (Figure 1). For example, based on Mahalanobis distance, the cophenetic distance between cultivars 8 and 9 is simply the average distance within cluster 1, i.e., d8,9 = 1,75. On the other hand, the cophenetic distance between cultivars 8 and 11 is the average distance between clusters 1 and 3, i.e., d8,11 = 3,26. Figura 1: Diagrams of cluster obtaned by the modified Tocher’s method representing the relationship of average distances within and between clusters based on (a) the squared generalized Mahalanobis distance and (b) the Euclidean distance. After building the cophenetic matrices, we calculated the correlations between the elements of each original distance matrix and its respective elements of the respective cophenetic matrix. For comparing results, we also have peformed hirarchical clustering with the following methods: Ward’s algorithm and average linkage (UPGMA). The cophenetic correlation for these methods were calculated too. The analyses were performed by using the softwares Genes version 2009.7.0 (CRUZ, 2006) and R version 3.0.2 (R CORE TEAM, 2013). The hierarchical clustering were performed with the function hclust() and the respective cophenetic matrices with the function cophenetic(). The modified Tocher clustering were performed with the module Multivariate analysis of the software Genes and the proposed cophenetic matrix was computed by using the function coph.tocher() of the package biotools version 1.1 (SILVA, 2014). Results and discussion Figure 2 shows that the cophenetic matrix obtained with the modified Tocher’s method has synthe- sized reliably the original distances. Besides that, the cophenetic distances tend to keep the original iThe R package biotools (Silva, 2014) contains a function called distClust() that can be used to compute the average distances within and between clusters. Sigmae, Alfenas, v.2, n.3, p. 85-89. 2013.
  • 4. Silva et al. (2013) 88 distance scale, once they use the average values of the original distances. q q q q q qq q q q q q q q q q q q q q qqqq q q q q q q q q q q qq qq q q q q q q q q q qqqq q q q q q q q q qq qq q q q q q q q q q qq q q q q q q q qqq q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q 0 2 4 6 8 10 12 2 4 6 8 Modified Tocher (r = 0.88) Original distances Copheneticdistances q q q q q qq q q qq q q q q q q q qq q qq q q q q qq qq q q q qq qqq q q q qq q qq q qq q q q q qq qq q qq qqq q q q qq q q q qq qq q q q q q qq q q q q qq qq q q q q q qq qq q q q q qq qq q q q qq qq q q qq qq q qq qq qq qq q q q q q q 0 2 4 6 8 10 12 0 5 10 15 20 25 Ward (r = 0.59) Original distancesCopheneticdistances q q q q q qq q q qq q q q q q q q qq q qq q q q q q q q q q q q qq qqq q q q q q q qq q qq q q q q q q q q q qq qqq q q q q q qq q qq qq q q q q q qqq q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q q qq q q q q q q q q q q q q q q 0 2 4 6 8 10 12 0 1 2 3 4 5 6 Average linkage (r = 0.73) Original distances Copheneticdistances q q q q q q qqq qq q qq q q q q q qq qqq qq q q qq qq q qq qqqq q q q q q q q qq qqq qq q qq qq qq qqqq q q q q q q q qqq qq q qq q q qqq qq q qq q q q q qq q qq qq q qq q qq qq qq q qq qq q q q qq q q q q q q q q q q q q q q q q 1 2 3 4 5 6 7 2 3 4 5 6 Modified Tocher (r = 0.79) Original distances Copheneticdistances q q q q q q qqq qq q q q q q q q q qq qq q qq q q q q q q q qq qqqq q q q q q q q qq qq q qq q q q q q qq qqqq qq q q q q q qqq qq qq q q q qqq qq qq q q q q q qq q q q q q q qq q q q q q qq q q q q q q q q q q q q q q q q q q q qq q q q q q 1 2 3 4 5 6 7 2 4 6 8 10 12 Ward (r = 0.63) Original distances Copheneticdistances q qq q q q qqq qq q q q q q q q q qq qq q qq q q q q q q q qq qqqq q q q q q q q qq qq q qq q qq q q qq qqqq qq q q q q q qqq qq q q q q q qqq qq q q q q q q q qq q qq q q q qq q qq q q qq q qq q q q q q q q q q q q q qq q q q q q q q q q 1 2 3 4 5 6 7 1.0 1.5 2.0 2.5 3.0 3.5 4.0 Averege linkage (r = 0.72) Original distances Copheneticdistances (a) (b) Figura 2: Shepard diagrams for association of original and cophenetic distances based on (a) the squared generalized Mahalanobis distance and (b) the Euclidean distance. Cophenetic correlations obtained by the Tocher (0.88 with Mahalanobis distances and 0.79 with Euclidean distances) were, even, higher than those obtained by the average linkage method (0.73 with Mahalanobis and 0.72 with Euclidean), even though the numbers of actual distances involved on the calculation of the proposed matrix (15 with Mahalanobis and 10 with Euclidean) are less than those used on the hierarchical methods (16 for both). Ward’s algorithm has presented weak linear relationship, which is an expected result since this method itself tends to show high values for the last entities merge levels, and the Pearson’s coeffici- ent is sensitive to outliers. Conclusions Most of our results are according with those found by Silva and Dias (2013), and the main conclusi- ons are: 1. The construction of the cophenetic matrix for the modified Tocher’s method depends directly on the number of groups. 2. Comparisons between clustering done with agglomerative hierarchical methods, Tocher and mo- dified Tocher can be performed by using a single criterion: the correlation between cophenetic and original distances. 3. The proposed cophenetic matrix can be computed by computational algorithms using the clustering outcome of the modified Tocher’s method and the matrix of cluster average distances. Sigmae, Alfenas, v.2, n.3, p. 85-89. 2013.
  • 5. Silva et al. (2013) 89 Acknowledgements To Coordenac¸˜ao de Aperfeic¸oamento de Pessoal de N´ıvel Superior (CAPES, Brazil) for granting the scholarship for the first author. References CRUZ, C.D. Programa Genes: Biometria. Vic¸osa: Editora UFV, 2006. 382p. R CORE TEAM. R: A language and environment for statistical computing. R Foundation for Statistical Computing, Vienna, Austria. 2013. ISBN 3-900051-07-0, URL http://www.R-project.org/. RAO, R.C. Advanced statistical methods in biometric research. New York: John Wiley and Sons, 1952. 390p. SILVA, A.R. M´etodos de agrupamento: avaliac¸˜ao e aplicac¸˜ao ao estudo de divergˆencia gen´etica em acessos de alho. 2012. 67p. Dissertac¸˜ao (Mestrado em Estat´ıstica Aplicada e Biometria), Universidade Federal de Vic¸osa, Vic¸osa, 2012. SILVA, A.R. biotools: Tools for Biometry and Applied Statistics in Agricultural Science. R package version 1.1. 2014. URL http://CRAN.R-project.org/package=biotools. SILVA, A.R.; DIAS, C.T.S. A cophenetic correlation coefficient for Tocher’s method. Pesquisa Agropecu´aria Brasileira, v.48, n.6, p.589-596, 2013. SNEATH, P.H.A.; SOKAL, R.R. Numerical taxonomy: the principles and practice of numerical classification. San Francisco: W.H. Freeman and Company, 1973. 573p. SOKAL, R.R.; ROHLF, F.J. The comparison of dendrograms by objective methods. Taxon, v.11, n.2, p.33-40, 1962. VASCONCELOS, E.S.; CRUZ, C.D.; BHERING, L.L.; RESENDE J ´UNIOR, M.F.R. M´etodo alternativo para an´alise de agrupamento. Pesquisa Agropecu´aria Brasileira, v.42, n.10, p.1421-1428, 2007. Sigmae, Alfenas, v.2, n.3, p. 85-89. 2013.