C.n {copula}R Documentation

The Empirical Copula

Description

Given pseudo-observations from a distribution with continuous margins and copula C, the empirical copula is the empirical distribution function of these pseudo-observations. It is thus a natural nonparametric estimator of C. The function C.n() computes the empirical copula or two alternative smoothed versions of the latter: the empirical beta copula or the empirical checkerboard copula; see Eqs. (2.1) and (4.1) in Segers, Sibuya and Tsukahara (2017), and the references therein.

The function dCn() approximates first-order partial derivatives of the unknown copula using the empirical copula.

The function F.n() computes the empirical distribution function of a multivariate sample. Note that C.n(u, X, smoothing="none", *) simply calls F.n(u, pobs(X), *) after checking u.

Usage

C.n(u, X, smoothing = c("none", "beta", "checkerboard"),
    offset = 0, method = c("C", "R"),
    ties.method = c("max", "average", "first", "last", "random", "min"))
dCn(u, U, j.ind=1:d, b=1/sqrt(nrow(U)), ...)

F.n(x, X, offset=0, method=c("C", "R"))

Cn(x, w) ## <-- deprecated!  use  C.n(w, x) instead!

Arguments

u,w

an (m, d)-matrix with elements in [0,1] whose rows contain the evaluation points of the empirical copula.

x

an (m, d)-matrix whose rows contain the evaluation points of the empirical distribution function.

U

for dCN() only: an (n,d)-matrix with elements in [0,1] and with the same number d of columns as u. The rows of U are the pseudo-observations based on which the empirical copula is computed.

X

(and x and U for Cn():) an (n, d)-matrix with the same number d of columns as x. Recall that a multivariate random sample X can be transformed to an appropriate U via pobs().

smoothing

character string specifying whether the empirical copula (smoothing="none"), the empirical beta copula (smoothing="beta") or the empirical checkerboard copula (smoothing="checkerboard") is computed.

ties.method

character string specifying how ranks should be computed if there are ties in any of the coordinate samples of x; passed to pobs.

j.ind

integer vector of indices j between 1 and d indicating the dimensions with respect to which first-order partial derivatives are approximated.

b

numeric giving the bandwidth for approximating first-order partial derivatives.

offset

used in scaling the result which is of the form sum(....)/(n+offset); defaults to zero.

method

character string indicating which method is applied to compute the empirical cumulative distribution function or the empirical copula. method="C" uses a an implementation in C, method="R" uses a pure R implementation.

...

additional arguments passed to dCn().

Details

There are several asymptotically equivalent definitions of the empirical copula. As mentioned above, the empirical copula C.n(, smoothing = "none") is simply defined as the empirical distribution function computed from the pseudo-observations, that is,

(1/n) sum(I_{U_i<=u}, i=1, .., n),

where U_i, i=1,..,n, denote the pseudo-observations (rows in U) and n the sample size. Internally, C.n(,smoothing = "none") is just a wrapper for F.n() and is expected to be fed with the pseudo-observations.

The approximation for the jth partial derivative of the unknown copula C is implemented as, for example, in Rémillard and Scaillet (2009), and given by

hat(C.)[jn](u) = (C[n](u[1], .., u[j-1], min(u[j]+b, 1), u[j+1], .., u[d]) - C[n](u[1], .., u[j-1], max(u[j]-b, 0), u[j+1], .., u[d])) / (2b),

where b denotes the bandwidth and C[n] the empirical copula.

Value

C.n() returns the empirical copula at u or a smoothed version of the latter. F.n() returns the empirical distribution function of X evaluated at x.

dCn() returns a vector (length(j.ind) is 1) or a matrix (with number of columns equal to length(j.ind)), containing the approximated first-order partial derivatives of the unknown copula at u with respect to the arguments in j.ind.

Note

The first version of our empirical copula implementation, Cn(), had its two arguments reversed compared to C.n(), and is deprecated now. You must swap its arguments to transform to new code.

The use of the two smoothed versions assumes implicitly no ties in the component samples of the data.

References

Rüschendorf, L. (1976). Asymptotic distributions of multivariate rank order statistics, Annals of Statistics 4, 912–923.

Deheuvels, P. (1979). La fonction de dépendance empirique et ses propriétés: un test non paramétrique d'indépendance, Acad. Roy. Belg. Bull. Cl. Sci., 5th Ser. 65, 274–292.

Deheuvels, P. (1981). A non parametric test for independence, Publ. Inst. Statist. Univ. Paris 26, 29–50.

Rémillard, B. and Scaillet, O. (2009). Testing for equality between two copulas. Journal of Multivariate Analysis, 100(3), pages 377-386.

Segers, J., Sibuya, M. and Tsukahara, H. (2017). The Empirical Beta Copula. Journal of Multivariate Analysis, 155, pages 35–51, http://arxiv.org/abs/1607.04430.

See Also

pobs() for computing pseudo-observations, pCopula() for evaluating a copula.

Examples

## Generate data X (from a meta-Gumbel model with N(0,1) margins)
n <- 100
d <- 3
family <- "Gumbel"
theta <- 2
cop <- onacopulaL(family, list(theta=theta, 1:d))
set.seed(1)
X <- qnorm(rCopula(n, cop)) # meta-Gumbel data with N(0,1) margins

## Random points were to evaluate the empirical copula
u <- matrix(runif(n*d), n, d)
ec <- C.n(u, X)

## Compare the empirical copula with the true copula
pc <- pCopula(u, copula=cop)
mean(abs(pc - ec)) # ~= 0.012 -- increase n to decrease this error

## The same for the two smoothed versions
beta <- C.n(u, X, smoothing = "beta")
mean(abs(pc - beta))
check <- C.n(u, X, smoothing = "checkerboard")
mean(abs(pc - check))

## Compare the empirical copula with F.n(pobs())
U <- pobs(X) # pseudo-observations
stopifnot(identical(ec, F.n(u, X=pobs(U)))) # even identical

## Compare the empirical copula based on U at U with the Kendall distribution
## Note: Theoretically, C(U) ~ K, so K(C_n(U, U=U)) should approximately be U(0,1)
plot(pK(C.n(U, X), cop=cop@copula, d=d))

## Compare the empirical copula and the true copula on the diagonal
C.n.diag <- function(u) C.n(do.call(cbind, rep(list(u), d)), X=X) # diagonal of C_n
C.diag <- function(u) pCopula(do.call(cbind, rep(list(u), d)), cop) # diagonal of C
curve(C.n.diag, from=0, to=1, # empirical copula diagonal
      main=paste("True vs empirical diagonal of a", family, "copula"),
      xlab="u", ylab=quote("True C(u,..,u) and empirical"~C[n](u,..,u)))
curve(C.diag, lty=2, add=TRUE) # add true copula diagonal
legend("bottomright", lty=2:1, bty="n", inset=0.02,
       legend = expression(C, C[n]))

## Approximate partial derivatives w.r.t. the 2nd and 3rd component
j.ind <- 2:3 # indices w.r.t. which the partial derivatives are computed
## Partial derivatives based on the empirical copula and the true copula
der23 <- dCn(u, U=pobs(U), j.ind=j.ind)
der23. <- copula:::dCdu(archmCopula(family, param=theta, dim=d), u=u)[,j.ind]
## Approximation error
summary(as.vector(abs(der23-der23.)))

## For an example of using F.n(), see help(mvdc)% ./Mvdc.Rd

[Package copula version 0.999-18 Index]