Bivariate Odds Ratio Model
Density and random generation for a bivariate binary regression model using an odds ratio as the measure of dependency.
rbinom2.or(n, mu1, mu2 = if (exchangeable) mu1 else stop("argument 'mu2' not specified"), oratio = 1, exchangeable = FALSE, tol = 0.001, twoCols = TRUE, colnames = if (twoCols) c("y1","y2") else c("00", "01", "10", "11"), ErrorCheck = TRUE) dbinom2.or(mu1, mu2 = if (exchangeable) mu1 else stop("'mu2' not specified"), oratio = 1, exchangeable = FALSE, tol = 0.001, colnames = c("00", "01", "10", "11"), ErrorCheck = TRUE)
n |
number of observations.
Same as in |
mu1, mu2 |
The marginal probabilities.
Only |
oratio |
Odds ratio. Must be numeric and positive. The default value of unity means the responses are statistically independent. |
exchangeable |
Logical. If |
twoCols |
Logical.
If |
colnames |
The |
tol |
Tolerance for testing independence. Should be some small positive numerical value. |
ErrorCheck |
Logical. Do some error checking of the input parameters? |
The function rbinom2.or
generates data coming from a bivariate
binary response model.
The data might be fitted with the VGAM family function
binom2.or
.
The function dbinom2.or
does not really compute the density
(because that does not make sense here) but rather returns the
four joint probabilities.
The function rbinom2.or
returns
either a 2 or 4 column matrix of 1s and 0s, depending on the argument
twoCols
.
The function dbinom2.or
returns
a 4 column matrix of joint probabilities; each row adds up to unity.
T. W. Yee
nn <- 1000 # Example 1 ymat <- rbinom2.or(nn, mu1 = logitlink(1, inv = TRUE), oratio = exp(2), exch = TRUE) (mytab <- table(ymat[, 1], ymat[, 2], dnn = c("Y1", "Y2"))) (myor <- mytab["0","0"] * mytab["1","1"] / (mytab["1","0"] * mytab["0","1"])) fit <- vglm(ymat ~ 1, binom2.or(exch = TRUE)) coef(fit, matrix = TRUE) bdata <- data.frame(x2 = sort(runif(nn))) # Example 2 bdata <- transform(bdata, mu1 = logitlink(-2 + 4 * x2, inverse = TRUE), mu2 = logitlink(-1 + 3 * x2, inverse = TRUE)) dmat <- with(bdata, dbinom2.or(mu1 = mu1, mu2 = mu2, oratio = exp(2))) ymat <- with(bdata, rbinom2.or(n = nn, mu1 = mu1, mu2 = mu2, oratio = exp(2))) fit2 <- vglm(ymat ~ x2, binom2.or, data = bdata) coef(fit2, matrix = TRUE) ## Not run: matplot(with(bdata, x2), dmat, lty = 1:4, col = 1:4, type = "l", main = "Joint probabilities", ylim = 0:1, ylab = "Probabilities", xlab = "x2", las = 1) legend("top", lty = 1:4, col = 1:4, legend = c("1 = (y1=0, y2=0)", "2 = (y1=0, y2=1)", "3 = (y1=1, y2=0)", "4 = (y1=1, y2=1)")) ## End(Not run)
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