A vector of length two or a matrix with two columns,
in which case the density/distribution is evaluated across
the rows.
n
Number of observations.
dep
Dependence parameter for the logistic, asymmetric
logistic, Husler-Reiss, negative logistic and asymmetric
negative logistic models.
asy
A vector of length two, containing the two asymmetry
parameters for the asymmetric logistic and asymmetric negative
logistic models.
alpha, beta
Alpha and beta parameters for the bilogistic,
negative bilogistic, Coles-Tawn and asymmetric mixed models.
model
The specified model; a character string. Must be
either "log" (the default), "alog", "hr",
"neglog", "aneglog", "bilog",
"negbilog", "ct" or "amix" (or any unique
partial match), for the logistic, asymmetric logistic,
Husler-Reiss, negative logistic, asymmetric negative logistic,
bilogistic, negative bilogistic, Coles-Tawn and asymmetric
mixed models respectively. If parameter arguments are given
that do not correspond to the specified model those arguments
are ignored, with a warning.
mar1, mar2
Vectors of length three containing marginal
parameters, or matrices with three columns where each
column represents a vector of values to be passed to the
corresponding marginal parameter.
log
Logical; if TRUE, the log density is returned.
lower.tail
Logical; if TRUE (default), the
distribution function is returned; the survivor function
is returned otherwise.
Details
Define
yi = yi(zi) = {1+si(zi-ai)/bi}^(-1/si)
for 1+si(zi-ai)/bi > 0 and
i = 1,2, where the marginal parameters are given by
code{mari} = (ai,bi,si),
bi > 0.
If si = 0 then yi is defined by
continuity.
In each of the bivariate distributions functions
G(z1,z2) given below, the univariate margins
are generalized extreme value, so that
G(zi) = exp(-yi) for i = 1,2.
If 1+si(zi-ai)/bi <= 0 for some
i = 1,2, the value zi is either greater than the
upper end point (if si < 0), or less than the lower
end point (if si > 0), of the ith univariate
marginal distribution.
model = "log" (Gumbel, 1960)
The bivariate logistic distribution function with
parameter code{dep} = r is
G(z1,z2) = exp{-[y1^(1/r)+y2^(1/r)]^r}
where 0 < r <= 1.
This is a special case of the bivariate asymmetric logistic
model.
Complete dependence is obtained in the limit as
r approaches zero.
Independence is obtained when r = 1.
model = "alog" (Tawn, 1988)
The bivariate asymmetric logistic distribution function with
parameters code{dep} = r and
code{asy} = (t1,t2) is
where 0 < r <= 1 and
0 <= t1,t2 <= 1.
When t1 = t2 = 1 the asymmetric logistic
model is equivalent to the logistic model.
Independence is obtained when either r = 1,
t1 = 0 or t2 = 0.
Complete dependence is obtained in the limit when
t1 = t2 = 1 and r
approaches zero.
Different limits occur when t1 and t2
are fixed and r approaches zero.
model = "hr" (Husler and Reiss, 1989)
The Husler-Reiss distribution function with parameter
code{dep} = r is
where Phi() is the standard normal distribution
function and r > 0.
Independence is obtained in the limit as r approaches zero.
Complete dependence is obtained as r tends to infinity.
model = "neglog" (Galambos, 1975)
The bivariate negative logistic distribution function
with parameter code{dep} = r is
G(z1,z2) = exp{-y1-y2+[y1^(-r)+y2^(-r)]^(-1/r)}
where r > 0.
This is a special case of the bivariate asymmetric negative
logistic model.
Independence is obtained in the limit as r approaches zero.
Complete dependence is obtained as r tends to infinity.
The earliest reference to this model appears to be
Galambos (1975, Section 4).
model = "aneglog" (Joe, 1990)
The bivariate asymmetric negative logistic distribution function
with parameters parameters code{dep} = r and
code{asy} = (t1,t2) is
where r > 0 and 0 < t1,t2 <= 1.
When t1 = t2 = 1 the asymmetric negative
logistic model is equivalent to the negative logistic model.
Independence is obtained in the limit as either r,
t1 or t2 approaches zero.
Complete dependence is obtained in the limit when
t1 = t2 = 1 and r
tends to infinity.
Different limits occur when t1 and t2
are fixed and r tends to infinity.
The earliest reference to this model appears to be Joe (1990),
who introduces a multivariate extreme value distribution which
reduces to G(z1,z2) in the bivariate case.
model = "bilog" (Smith, 1990)
The bilogistic distribution function with
parameters code{alpha} = alpha
and code{beta} = beta is
0 < alpha,beta < 1.
When alpha = beta the bilogistic model
is equivalent to the logistic model with dependence parameter
code{dep} = alpha = beta.
Complete dependence is obtained in the limit as
alpha = beta approaches zero.
Independence is obtained as
alpha = beta approaches one, and when
one of alpha,beta is fixed and the other
approaches one.
Different limits occur when one of
alpha,beta is fixed and the other
approaches zero.
A bilogistic model is fitted in Smith (1990), where it appears
to have been first introduced.
model = "negbilog" (Coles and Tawn, 1994)
The negative bilogistic distribution function with
parameters code{alpha} = alpha
and code{beta} = beta is
alpha > 0 and beta > 0.
When alpha = beta the negative bilogistic
model is equivalent to the negative logistic model with dependence
parameter
code{dep} = 1/alpha = 1/beta.
Complete dependence is obtained in the limit as
alpha = beta approaches zero.
Independence is obtained as
alpha = beta tends to infinity, and when
one of alpha,beta is fixed and the other
tends to infinity.
Different limits occur when one of
alpha,beta is fixed and the other
approaches zero.
model = "ct" (Coles and Tawn, 1991)
The Coles-Tawn distribution function with
parameters code{alpha} = alpha > 0
and code{beta} = beta > 0 is
where
q = alpha y2 / (alpha y2 + beta y1) and
Be(q;alpha,beta) is the beta
distribution function evaluated at q with
code{shape1} = alpha and
code{shape2} = beta.
Complete dependence is obtained in the limit as
alpha = beta tends to infinity.
Independence is obtained as
alpha = beta approaches zero, and when
one of alpha,beta is fixed and the other
approaches zero.
Different limits occur when one of
alpha,beta is fixed and the other
tends to infinity.
model = "amix" (Tawn, 1988)
The asymmetric mixed distribution function with
parameters code{alpha} = alpha
and code{beta} = beta has
a dependence function with the following cubic polynomial
form.
A(t) = 1 - (α +β)t + α t^2 + β t^3
where alpha and alpha + 3beta
are non-negative, and where alpha + beta
and alpha + 2beta are less than or equal
to one.
These constraints imply that beta lies in the interval [-0.5,0.5]
and that alpha lies in the interval [0,1.5], though alpha can
only be greater than one if beta is negative. The strength
of dependence increases for increasing alpha (for fixed beta).
Complete dependence cannot be obtained.
Independence is obtained when both parameters are zero.
For the definition of a dependence function, see
abvevd.
Value
dbvevd gives the density function, pbvevd gives the
distribution function and rbvevd generates random deviates,
for one of nine parametric bivariate extreme value models.
Note
The logistic and asymmetric logistic models respectively are
simulated using bivariate versions of Algorithms 1.1 and 1.2 in
Stephenson(2003).
All other models are simulated using a root finding algorithm
to simulate from the conditional distributions.
The simulation of the bilogistic and negative bilogistic models
requires a root finding algorithm to evaluate q
within the root finding algorithm used to simulate from the
conditional distributions.
The generation of bilogistic and negative bilogistic random
deviates is therefore relatively slow (about 2.8 seconds per
1000 random vectors on a 450MHz PIII, 512Mb RAM).
The bilogistic and negative bilogistic models can be represented
under a single model, using the integral of the maximum of two
beta distributions (Joe, 1997).
The Coles-Tawn model is called the Dirichelet model in Coles
and Tawn (1991).
References
Coles, S. G. and Tawn, J. A. (1991)
Modelling extreme multivariate events.
J. Roy. Statist. Soc., B, 53, 377–392.
Coles, S. G. and Tawn, J. A. (1994)
Statistical methods for multivariate extremes: an application to
structural design (with discussion).
Appl. Statist., 43, 1–48.
Galambos, J. (1975)
Order statistics of samples from multivariate distributions.
J. Amer. Statist. Assoc., 70, 674–680.
Gumbel, E. J. (1960)
Distributions des valeurs extremes en plusieurs dimensions.
Publ. Inst. Statist. Univ. Paris, 9, 171–173.
Husler, J. and Reiss, R.-D. (1989)
Maxima of normal random vectors: between independence
and complete dependence.
Statist. Probab. Letters, 7, 283–286.
Joe, H. (1990)
Families of min-stable multivariate exponential and multivariate
extreme value distributions.
Statist. Probab. Letters, 9, 75–81.
Joe, H. (1997)
Multivariate Models and Dependence Concepts,
London: Chapman & Hall.
Smith, R. L. (1990)
Extreme value theory. In
Handbook of Applicable Mathematics (ed. W. Ledermann),
vol. 7. Chichester: John Wiley, pp. 437–471.
Stephenson, A. G. (2003)
Simulating multivariate extreme value distributions of logistic type.
Extremes, 6(1), 49–60.
Tawn, J. A. (1988)
Bivariate extreme value theory: models and estimation.
Biometrika, 75, 397–415.
See Also
abvevd, rgev, rmvevd
Examples
pbvevd(matrix(rep(0:4,2), ncol=2), dep = 0.7, model = "log")
pbvevd(c(2,2), dep = 0.7, asy = c(0.6,0.8), model = "alog")
pbvevd(c(1,1), dep = 1.7, model = "hr")
margins <- cbind(0, 1, seq(-0.5,0.5,0.1))
rbvevd(11, dep = 1.7, model = "hr", mar1 = margins)
rbvevd(10, dep = 1.2, model = "neglog", mar1 = c(10, 1, 1))
rbvevd(10, alpha = 0.7, beta = 0.52, model = "bilog")
dbvevd(c(0,0), dep = 1.2, asy = c(0.5,0.9), model = "aneglog")
dbvevd(c(0,0), alpha = 0.75, beta = 0.5, model = "ct", log = TRUE)
dbvevd(c(0,0), alpha = 0.7, beta = 1.52, model = "negbilog")