gamVineSeqFit {gamCopula} | R Documentation |
Sequential maximum penalized likelihood estimation of a GAM-Vine model.
Description
This function estimates the parameter(s) of a Generalized Additive model
(GAM) Vine model, where GAMs for individual edges are specified either for
the copula parameter or Kendall's tau.
It solves the maximum penalized likelihood estimation for the copula families
supported in this package by reformulating each Newton-Raphson iteration as
a generalized ridge regression, which is solved using
the mgcv
package.
Usage
gamVineSeqFit(
data,
GVC,
covariates = NA,
method = "FS",
tol.rel = 0.001,
n.iters = 10,
verbose = FALSE,
...
)
Arguments
data |
A matrix or data frame containing the data in [0,1]^d. |
GVC |
A |
covariates |
Vector of names for the covariates. |
method |
|
tol.rel |
Relative tolerance for |
n.iters |
Maximal number of iterations for
|
verbose |
|
... |
Value
gamVineSeqFit
returns a
gamVine
object.
See Also
gamVineCopSelect
and
gamVineStructureSelect
gamVineCopSelect
,gamVineStructureSelect
,
gamVine-class
, gamVineSimulate
and
gamBiCopFit
.
Examples
require(mgcv)
set.seed(0)
## Simulation parameters
# Sample size
n <- 1e3
# Copula families
familyset <- c(1:2, 301:304, 401:404)
# Define a 4-dimensional R-vine tree structure matrix
d <- 4
Matrix <- c(2, 3, 4, 1, 0, 3, 4, 1, 0, 0, 4, 1, 0, 0, 0, 1)
Matrix <- matrix(Matrix, d, d)
nnames <- paste("X", 1:d, sep = "")
## A function factory
eta0 <- 1
calib.surf <- list(
calib.quad <- function(t, Ti = 0, Tf = 1, b = 8) {
Tm <- (Tf - Ti) / 2
a <- -(b / 3) * (Tf^2 - 3 * Tf * Tm + 3 * Tm^2)
return(a + b * (t - Tm)^2)
},
calib.sin <- function(t, Ti = 0, Tf = 1, b = 1, f = 1) {
a <- b * (1 - 2 * Tf * pi / (f * Tf * pi +
cos(2 * f * pi * (Tf - Ti))
- cos(2 * f * pi * Ti)))
return((a + b) / 2 + (b - a) * sin(2 * f * pi * (t - Ti)) / 2)
},
calib.exp <- function(t, Ti = 0, Tf = 1, b = 2, s = Tf / 8) {
Tm <- (Tf - Ti) / 2
a <- (b * s * sqrt(2 * pi) / Tf) * (pnorm(0, Tm, s) - pnorm(Tf, Tm, s))
return(a + b * exp(-(t - Tm)^2 / (2 * s^2)))
}
)
## Create the model
# Define gam-vine model list
count <- 1
model <- vector(mode = "list", length = d * (d - 1) / 2)
sel <- seq(d, d^2 - d, by = d)
# First tree
for (i in 1:(d - 1)) {
# Select a copula family
family <- sample(familyset, 1)
model[[count]]$family <- family
# Use the canonical link and a randomly generated parameter
if (is.element(family, c(1, 2))) {
model[[count]]$par <- tanh(rnorm(1) / 2)
if (family == 2) {
model[[count]]$par2 <- 2 + exp(rnorm(1))
}
} else {
if (is.element(family, c(401:404))) {
rr <- rnorm(1)
model[[count]]$par <- sign(rr) * (1 + abs(rr))
} else {
model[[count]]$par <- rnorm(1)
}
model[[count]]$par2 <- 0
}
count <- count + 1
}
# A dummy dataset
data <- data.frame(u1 = runif(1e2), u2 = runif(1e2), matrix(runif(1e2 * d), 1e2, d))
# Trees 2 to (d-1)
for (j in 2:(d - 1)) {
for (i in 1:(d - j)) {
# Select a copula family
family <- sample(familyset, 1)
# Select the conditiong set and create a model formula
cond <- nnames[sort(Matrix[(d - j + 2):d, i])]
tmpform <- paste("~", paste(paste("s(", cond, ", k=10, bs='cr')",
sep = ""
), collapse = " + "))
l <- length(cond)
temp <- sample(3, l, replace = TRUE)
# Spline approximation of the true function
m <- 1e2
x <- matrix(seq(0, 1, length.out = m), nrow = m, ncol = 1)
if (l != 1) {
tmp.fct <- paste("function(x){eta0+",
paste(sapply(1:l, function(x)
paste("calib.surf[[", temp[x], "]](x[", x, "])",
sep = ""
)), collapse = "+"), "}",
sep = ""
)
tmp.fct <- eval(parse(text = tmp.fct))
x <- eval(parse(text = paste0("expand.grid(",
paste0(rep("x", l), collapse = ","), ")",
collapse = ""
)))
y <- apply(x, 1, tmp.fct)
} else {
tmp.fct <- function(x) eta0 + calib.surf[[temp]](x)
colnames(x) <- cond
y <- tmp.fct(x)
}
# Estimate the gam model
form <- as.formula(paste0("y", tmpform))
dd <- data.frame(y, x)
names(dd) <- c("y", cond)
b <- gam(form, data = dd)
# plot(x[,1],(y-fitted(b))/y)
# Create a dummy gamBiCop object
tmp <- gamBiCopFit(data = data, formula = form, family = 1, n.iters = 1)$res
# Update the copula family and the model coefficients
attr(tmp, "model")$coefficients <- coefficients(b)
attr(tmp, "model")$smooth <- b$smooth
attr(tmp, "family") <- family
if (family == 2) {
attr(tmp, "par2") <- 2 + exp(rnorm(1))
}
model[[count]] <- tmp
count <- count + 1
}
}
# Create the gamVineCopula object
GVC <- gamVine(Matrix = Matrix, model = model, names = nnames)
print(GVC)
## Not run:
## Simulate and fit the model
sim <- gamVineSimulate(n, GVC)
fitGVC <- gamVineSeqFit(sim, GVC, verbose = TRUE)
fitGVC2 <- gamVineCopSelect(sim, Matrix, verbose = TRUE)
(gamVinePDF(GVC, sim[1:10, ]))
## Plot the results
dev.off()
par(mfrow = c(3, 4))
plot(GVC, ylim = c(-2.5, 2.5))
plot(fitGVC, ylim = c(-2.5, 2.5))
plot(fitGVC2, ylim = c(-2.5, 2.5))
## End(Not run)