HOME

TheInfoList



OR:

Although the subject of
sexual dimorphism Sexual dimorphism is the condition where the sexes of the same animal and/or plant species exhibit different morphological characteristics, particularly characteristics not directly involved in reproduction. The condition occurs in most an ...
is not in itself controversial, the measures by which it is assessed differ widely. Most of the measures are used on the assumption that a
random variable A random variable (also called random quantity, aleatory variable, or stochastic variable) is a mathematical formalization of a quantity or object which depends on random events. It is a mapping or a function from possible outcomes (e.g., the p ...
is considered so that
probability distribution In probability theory and statistics, a probability distribution is the mathematical function that gives the probabilities of occurrence of different possible outcomes for an experiment. It is a mathematical description of a random phenomeno ...
s should be taken into account. In this review, a series of sexual dimorphism measures are discussed concerning both their definition and the probability law on which they are based. Most of them are sample functions, or statistics, which account for only partial characteristics, for example the
mean There are several kinds of mean in mathematics, especially in statistics. Each mean serves to summarize a given group of data, often to better understand the overall value ( magnitude and sign) of a given data set. For a data set, the '' ari ...
or
expected value In probability theory, the expected value (also called expectation, expectancy, mathematical expectation, mean, average, or first moment) is a generalization of the weighted average. Informally, the expected value is the arithmetic mean of a ...
, of the distribution involved. Further, the most widely used measure fails to incorporate an inferential support.


Introduction

It is widely known that
sexual dimorphism Sexual dimorphism is the condition where the sexes of the same animal and/or plant species exhibit different morphological characteristics, particularly characteristics not directly involved in reproduction. The condition occurs in most an ...
is an important component of the morphological
variation Variation or Variations may refer to: Science and mathematics * Variation (astronomy), any perturbation of the mean motion or orbit of a planet or satellite, particularly of the moon * Genetic variation, the difference in DNA among individual ...
in biological populations (see, e.g., Klein and Cruz-Uribe, 1983; Oxnard, 1987; Kelley, 1993). In higher Primates, sexual dimorphism is also related to some aspects of the social organization and behavior (Alexander ''et al.'', 1979; Clutton-Brock, 1985). Thus, it has been observed that the most dimorphic species tend to
polygyny Polygyny (; from Neoclassical Greek πολυγυνία (); ) is the most common and accepted form of polygamy around the world, entailing the marriage of a man with several women. Incidence Polygyny is more widespread in Africa than in any o ...
and a social organization based on male dominance, whereas in the less dimorphic species,
monogamy Monogamy ( ) is a form of dyadic relationship in which an individual has only one partner during their lifetime. Alternately, only one partner at any one time ( serial monogamy) — as compared to the various forms of non-monogamy (e.g., polyg ...
and family groups are more common. Fleagle ''et al.'' (1980) and Kay (1982), on the other hand, have suggested that the behavior of extinct species can be inferred on the basis of sexual dimorphism and, e.g. Plavcan and van Schaick (1992) think that sex differences in size among primate species reflect processes of an ecological and social nature. Some references on sexual dimorphism regarding human populations can be seen in Lovejoy (1981), Borgognini Tarli and Repetto (1986) and Kappelman (1996). These biological facts do not appear to be controversial. However, they are based on a series of different sexual dimorphism
measures Measure may refer to: * Measurement, the assignment of a number to a characteristic of an object or event Law * Ballot measure, proposed legislation in the United States * Church of England Measure, legislation of the Church of England * Mea ...
, or indices. Sexual dimorphism, in most works, is measured on the assumption that a
random variable A random variable (also called random quantity, aleatory variable, or stochastic variable) is a mathematical formalization of a quantity or object which depends on random events. It is a mapping or a function from possible outcomes (e.g., the p ...
is being taken into account. This means that there is a law which accounts for the behavior of the whole set of values that compose the domain of the random variable, a law which is called distribution function. Because both studies of sexual dimorphism aim at establishing differences, in some random variable, between sexes and the behavior of the random variable is accounted for by its distribution function, it follows that a sexual dimorphism study should be equivalent to a study whose main purpose is to determine to what extent the two distribution functions - one per sex - overlap (see shaded area in Fig. 1, where two
normal distribution In statistics, a normal distribution or Gaussian distribution is a type of continuous probability distribution for a real-valued random variable. The general form of its probability density function is : f(x) = \frac e^ The parameter \mu i ...
s are represented).


Measures based on sample means

In Borgognini Tarli and Repetto (1986) an account of indices based on sample means can be seen. Perhaps, the most widely used is the quotient, :\frac , where \bar_m is the sample mean of one sex (e.g., male) and \bar_f the corresponding mean of the other. Nonetheless, for instance, :\operatorname\frac , 100\frac , 100\frac , have also been proposed. Going over the works where these indices are used, the reader misses any reference to their parametric counterpart (see reference above). In other words, if we suppose that the quotient of two sample means is considered, no work can be found where, in order to make
inferences Inferences are steps in reasoning, moving from premises to logical consequences; etymologically, the word ''infer'' means to "carry forward". Inference is theoretically traditionally divided into deduction and induction, a distinction that in ...
, the way in which the quotient is used as a point
estimate Estimation (or estimating) is the process of finding an estimate or approximation, which is a value that is usable for some purpose even if input data may be incomplete, uncertain, or unstable. The value is nonetheless usable because it is de ...
of :\frac , is discussed. By assuming that differences between populations are the objective to analyze, when quotients of sample means are used it is important to point out that the only feature of these populations that seems to be interesting is the mean parameter. However, a population has also variance, as well as a shape which is defined by its distribution function (notice that, in general, this function depends on parameters such as means or variances).


Measures based on something more than sample means

Marini ''et al.'' (1999) have illustrated that it is a good idea to consider something other than sample means when sexual dimorphism is analyzed. Possibly, the main reason is that the intrasexual variability influences both the manifestation of dimorphism and its interpretation.


Normal populations


Sample functions

It is likely that, within this type of indices, the one used the most is the well-known statistic with Student's ''t'' distribution (see, for instance, Green, 1989). Marini ''et al.'' (1999) have observed that variability among females seems to be lower than among males, so that it appears advisable to use the form of the Student's ''t'' statistic with degrees of freedom given by the Welch-Satterthwaite approximation, :T = \frac : t_\nu , :\nu = \frac , where S^2_i, n_i, i=1,2 are sample variances and sample sizes, respectively. It is important to point out the following: *when this statistic is taken into account in sexual dimorphism studies, two normal populations are involved. From these populations two random samples are extracted, each one corresponding to a sex, and such samples are independent. *when inferences are considered, what we are testing by using this statistic is that the difference between two mathematical expectations is a hypothesized value, say \mu_0 = \mu_1 - \mu_2. However, in sexual dimorphism analyses, it does not appear reasonably (see Ipiña and Durand, 2000) to assume that two independent random samples have been selected. Rather on the contrary, when we sample we select some random observations - making up one sample - that sometimes correspond to one sex and sometimes to the other.


Taking parameters into account

Chakraborty and Majumder (1982) have proposed an index of sexual dimorphism that is the overlapping area - to be precise, its complement - of two normal
density Density (volumetric mass density or specific mass) is the substance's mass per unit of volume. The symbol most often used for density is ''ρ'' (the lower case Greek letter rho), although the Latin letter ''D'' can also be used. Mathematicall ...
functions (see Fig. 1). Therefore, it is a function of four parameters \mu_i,\sigma^2_i, i=1,2 (expected values and variances, respectively), and takes the shape of the two normals into account. Inman and Bradley (1989) have discussed this overlapping area as a measure to assess the distance between two normal densities. Regarding inferences, Chakraborty and Majumder proposed a sample function constructed by considering the Laplace-DeMoivre's theorem (an application to
binomial Binomial may refer to: In mathematics *Binomial (polynomial), a polynomial with two terms *Binomial coefficient, numbers appearing in the expansions of powers of binomials * Binomial QMF, a perfect-reconstruction orthogonal wavelet decomposition ...
laws of the
central limit theorem In probability theory, the central limit theorem (CLT) establishes that, in many situations, when independent random variables are summed up, their properly normalized sum tends toward a normal distribution even if the original variables thems ...
). According to these authors, the variance of such a statistic is, :\operatorname(\widehat) = \frac + \frac , where \widehat is the statistic, and \widehat_i, n_i, i=m,f (male, female) stand for the estimate of the probability of observing the measurement of an individual of the i sex in some interval of the real line, and the sample size of the ''i'' sex, respectively. Notice that this implies that two independent random variables with binomial distributions have to be regarded. One of such variables is ''number of individuals of the f sex in a sample of size n_f composed of individuals of the f sex'', which seems nonsensical.


Mixture models

Authors such as Josephson ''et al.'' (1996) believe that the two sexes to be analyzed form a single population with a probabilistic behavior denominated a mixture of two normal populations. Thus, if X is a random variable which is normally distributed among the females of a population and likewise this variable is normally distributed among the males of the population, then, :f(x) = \sum_^n \pi_if_i(x), -\infty < x < \infty , is the density of the mixture with two normal components, where f_i, \pi_i, i=1,2 are the normal densities and the mixing proportions of both sexes, respectively. See an example in Fig. 2 where the thicker curve represents the mixture whereas the thinner curves are the \pi_if_i functions. It is from a population modelled like this that a random sample with individuals of both sexes can be selected. Note that on this sample tests which are based on the normal assumption cannot be applied since, in a mixture of two normal components, \pi_if_i is not a normal density. Josephson ''et al.'' limited themselves to considering two normal mixtures with the same component variances and mixing proportions. As a consequence, their proposal to measure sexual dimorphism is the difference between the mean parameters of the two normals involved. In estimating these central parameters, the procedure used by Josephson ''et al.'' is the one of Pearson's moments. Nowadays, the EM expectation maximization algorithm (see McLachlan and Basford, 1988) and the MCMC Markov chain Monte Carlo Bayesian procedure (see Gilks ''et al.'', 1996) are the two competitors for estimating mixture parameters. Possibly the main difference between considering two independent normal populations and a mixture model of two normal components is in the mixing proportions, which is the same as saying that in the two independent normal population model the interaction between sexes is ignored. This, in turn implies that probabilistic properties change (see Ipiña and Durand, 2000).


The MI measure

Ipiña and Durand (2000, 2004) have proposed a measure of sexual dimorphism called MI. This proposal computes the overlapping area between the \pi_1f_1 and \pi_2f_2 functions, which represent the contribution of each sex to the two normal components mixture (see shaded area in Fig. 2). Thus, MI can be written, :MI = \int_R \operatorname pi_1f_1(x), (1 - \pi_1)f_2(x),dx , R being the real line. The smaller the overlapping area the greater the gap between the two functions \pi_1f_1 and \pi_2f_2, in which case the sexual dimorphism is greater. Obviously, this index is a function of the five parameters that characterize a mixture of two normal components (\mu_i, \sigma^2_i, \pi_1, i=1,2). Its range is in the interval (0, 0.5], and the interested reader can see, in the work of the authors who proposed the index, the way in which an interval estimate is constructed.


Measures based on non-parametric methods

Marini ''et al.'' (1999) have suggested the Kolmogorov-Smirnov test, Kolmogorov-Smirnov distance as a measure of sexual dimorphism. The authors use the following form of the statistic, :\operatorname_x, F_1(x) - F_2(x), , with F_i, i=1,2 being sample cumulative distributions corresponding to two independent random samples. Such a distance has the advantage of being applicable whatever the form of the random variable distributions concerned, yet they should be continuous. The use of this distance assumes that two populations are involved. Further, the Kolmogorov-Smirnov distance is a sample function whose aim is to test that the two samples under analysis have been selected from a single distribution. If one accepts the
null hypothesis In scientific research, the null hypothesis (often denoted ''H''0) is the claim that no difference or relationship exists between two sets of data or variables being analyzed. The null hypothesis is that any experimentally observed difference is d ...
, then there is not sexual dimorphism; otherwise, there is.


See also

*
Bateman's principle Bateman's principle, in evolutionary biology, is that in most species, variability in reproductive success (or reproductive variance) is greater in males than in females. It was first proposed by Angus John Bateman (1919–1996), an English gen ...
*
Digit ratio The digit ratio is the ratio of the lengths of different digits or fingers on a hand, the study of which has been considered pseudoscience. The 2D:4D ratio is the most studied digit ratio and is calculated by dividing the length of the index fi ...
*
Gender differences Sex differences in humans have been studied in a variety of fields. Sex determination occurs by the presence or absence of a Y in the 23rd pair of chromosomes in the human genome. Phenotypic sex refers to an individual's sex as determined by the ...
*
Sexual dimorphism Sexual dimorphism is the condition where the sexes of the same animal and/or plant species exhibit different morphological characteristics, particularly characteristics not directly involved in reproduction. The condition occurs in most an ...


References

*Alexander, R.D., Hoogland, J.L., Howard, R.D., Noonan, K.M. and Sherman, P.W. (1979
Sexual dimorphism and breeding systems in pinnipeds, ungulates, primates and humans
in ''Evolutionary Biology and Human Social Behavior: An Anthropological Perspective'', N.A. Chagnon and W. Irons, Scituate, M.A.: Duxbury Press, 402–435. *Borgognini Tarli, S.M. and Repetto, E. (1986
Methodological considerations on the study of sexual dimorphism in past human populations
Hum. Evol. 1: 51–56. *Chakraborty, R. and Majumder, P.P. (1982) On Bennet's measure of sex dimorphism. Am. J. Phys. Anthrop. 59: 295–298. *Clutton-Brock, T.H. (1985
Size, sexual dimorphism and polygamy in primates
in ''Size and Scaling in Primate Biology'', W.L. Jungers, N. York: Plenum, 211–237. *Fleagle, J.G., Kay, R.F. and Simons, E.L. (1980
Sexual dimorphism in early anthropoids
Nature 287: 328–330. *Gilks, W.R., Richardson, S. and Spiegelhalter, D.J. (1996)
Markov Chain Monte Carlo in Practice
'. London: Chapman and Hall. *Green, D.L. (1989
Comparison of t-tests for differences in sexual dimorphism between populations
Am. J. Phys. Anthropol. 79: 121–125. *Inman, H.F. and Bradley, E.L. (1989
The overlapping coefficient as a measure of agreement between probability distributions and point estimation of the overlap of two normal densities
Commun. Statist.-Theory Meth. 18: 3851–3874. *Ipiña, S.L. and Durand, A.I. (2000
A measure of sexual dimorphism in populations which are univariate normal mixtures
Bull. Math. Biol. 62: 925–941. *Ipiña, S.L. and Durand, A.I. (2004
Inferential assessment of the MI index of sexual dimorphism: A comparative study with some other sexual dimorphism measures
Bull. Math. Biol. 66: 505–522. *Josephson, S.C., Juell, K.E. and Rogers, A.R. (1996
Estimating sexual dimorphism by method of moments
Am. J. Phys. Anthropol. 100: 191–206. *Kappelman, J. (1996
The evolution of body mass and relative brain size in fossil hominids
{cbignore, bot=medic. J. Hum. Evol. 30: 243–276. *Kay, R.F. (1982) ''Sivapithecus simonsi'' a new species of Miocene hominoid with comments on the phylogenetic status of Ramapithecinae. Int. J. Primatol. 3: 113–173. *Kelley, J. (1993) Taxonomic implications of sexual dimorphism in ''Lufengpithecus'', in ''Species, Species Concepts, and Primate Evolution'', W.H. Kimbel and L.B. Martin, N. York: Plenum, 429–458. *Klein, R.G. and Cruz-Uribe, K. (1983) ''The Analysis of Animal Bones from Archaeological Sites''. Chicago: University of Chicago Press. *Lovejoy, C.O. (1981) The origin of man. Science 211: 341–350. *Marini, E. Racugno, W. and Borgognini Tarli, S.M. (1999) Univariate estimates of sexual dimorphism: the effects of intrasexual variability. Am. J. Phys. Anthrop. 109: 501–508. * McLachlan, G.J. and Basford, K.E. (1988) ''Mixture Models. Inference and Applications to Clustering''. N. York: Marcel Dekker Inc. *Oxnard, C.E. (1987) ''Fossils, Teeth and Sex: New Perspective in Human Evolution''. Seattle: University of Washington Press. *Plavcan, J.M. and van Schaick, C.P. (1992
Intrasexual competition and canine dimorphism in anthropoid primates
Am. J. Phys. Anthropol. 87: 461–477. Applied sciences Social statistics Sexual dimorphism