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VGAM (version 1.0-5)

binormal: Bivariate Normal Distribution Family Function

Description

Maximum likelihood estimation of the five parameters of a bivariate normal distribution.

Usage

binormal(lmean1 = "identitylink", lmean2 = "identitylink",
         lsd1   = "loge",     lsd2   = "loge",
         lrho   = "rhobit",
         imean1 = NULL,       imean2 = NULL,
         isd1   = NULL,       isd2   = NULL,
         irho   = NULL,       imethod = 1,
         eq.mean = FALSE,     eq.sd = FALSE,
         zero = c("sd", "rho"))

Arguments

lmean1, lmean2, lsd1, lsd2, lrho

Link functions applied to the means, standard deviations and rho parameters. See Links for more choices. Being positive quantities, a log link is the default for the standard deviations.

imean1, imean2, isd1, isd2, irho, imethod, zero

See CommonVGAMffArguments for more information.

eq.mean, eq.sd

Logical or formula. Constrains the means or the standard deviations to be equal.

Value

An object of class "vglmff" (see vglmff-class). The object is used by modelling functions such as vglm, and vgam.

Warning

This function may be renamed to normal2() or something like that at a later date.

Details

For the bivariate normal distribution, this fits a linear model (LM) to the means, and by default, the other parameters are intercept-only. The response should be a two-column matrix. The correlation parameter is rho, which lies between \(-1\) and \(1\) (thus the rhobit link is a reasonable choice). The fitted means are returned as the fitted values, which is in the form of a two-column matrix. Fisher scoring is implemented.

See Also

uninormal, gaussianff, pbinorm, bistudentt.

Examples

Run this code
# NOT RUN {
set.seed(123); nn <- 1000
bdata <- data.frame(x2 = runif(nn), x3 = runif(nn))
bdata <- transform(bdata, y1 = rnorm(nn, 1 + 2 * x2),
                          y2 = rnorm(nn, 3 + 4 * x2))
fit1 <- vglm(cbind(y1, y2) ~ x2,
             binormal(eq.sd = TRUE), data = bdata, trace = TRUE)
coef(fit1, matrix = TRUE)
constraints(fit1)
summary(fit1)

# Estimated P(Y1 <= y1, Y2 <= y2) under the fitted model
var1  <- loge(2 * predict(fit1)[, "loge(sd1)"], inverse = TRUE)
var2  <- loge(2 * predict(fit1)[, "loge(sd2)"], inverse = TRUE)
cov12 <- rhobit(predict(fit1)[, "rhobit(rho)"], inverse = TRUE)
head(with(bdata, pbinorm(y1, y2,
                         mean1 = predict(fit1)[, "mean1"],
                         mean2 = predict(fit1)[, "mean2"],
                         var1 = var1, var2 = var2, cov12 = cov12)))
# }

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