#' described by the corresponding column parameter in the matrix β + intercept b.
#'
#' @param n Number of individuals
-#' @param p Vector of K-1 populations relative proportions (sum <= 1)
+#' @param p Vector of K(-1) populations relative proportions (sum (<)= 1)
#' @param β Vectors of model parameters for each population, of size dxK
#' @param b Vector of intercept values (use rep(0,K) for no intercept)
#' @param link Link type; "logit" or "probit"
stop("n: positive integer")
if (!is.matrix(β) || !is.numeric(β) || any(is.na(β)))
stop("β: real matrix, no NAs")
- K = ncol(β)
- if (!is.numeric(p) || length(p)!=K-1 || any(is.na(p)) || any(p<0) || sum(p) > 1)
- stop("p: positive vector of size K-1, no NA, sum<=1")
- p <- c(p, 1-sum(p))
+ K <- ncol(β)
+ if (!is.numeric(p) || length(p)<K-1 || any(is.na(p)) || any(p<0) || sum(p) > 1)
+ stop("p: positive vector of size >= K-1, no NA, sum(<)=1")
+ if (length(p) == K-1)
+ p <- c(p, 1-sum(p))
if (!is.numeric(b) || length(b)!=K || any(is.na(b)))
stop("b: real vector of size K, no NA")
- #random generation of the size of each population in X~Y (unordered)
- classes = rmultinom(1, n, p)
+ # Random generation of the size of each population in X~Y (unordered)
+ classes <- rmultinom(1, n, p)
- d = nrow(β)
- zero_mean = rep(0,d)
- id_sigma = diag(rep(1,d))
- # Always consider an intercept (use b=0 for none)
- d = d + 1
- β = rbind(β, b)
- X = matrix(nrow=0, ncol=d)
- Y = c()
- index = c()
- for (i in 1:ncol(β))
+ d <- nrow(β)
+ zero_mean <- rep(0,d)
+ id_sigma <- diag(rep(1,d))
+ X <- matrix(nrow=0, ncol=d)
+ Y <- c()
+ index <- c()
+ for (i in 1:K)
{
- index = c(index, rep(i, classes[i]))
- newXblock = cbind( MASS::mvrnorm(classes[i], zero_mean, id_sigma), 1 )
- arg_link = newXblock %*% β[,i] #β
- probas =
+ index <- c(index, rep(i, classes[i]))
+ newXblock <- MASS::mvrnorm(classes[i], zero_mean, id_sigma)
+ arg_link <- newXblock %*% β[,i] + b[i]
+ probas <-
if (link == "logit")
{
e_arg_link = exp(arg_link)
else #"probit"
pnorm(arg_link)
probas[is.nan(probas)] = 1 #overflow of exp(x)
- #probas = rowSums(p * probas)
- X = rbind(X, newXblock)
- #Y = c( Y, vapply(probas, function(p) (ifelse(p >= .5, 1, 0)), 1) )
- Y = c( Y, vapply(probas, function(p) (rbinom(1,1,p)), 1) )
+ X <- rbind(X, newXblock)
+ Y <- c( Y, vapply(probas, function(p) (rbinom(1,1,p)), 1) )
}
- shuffle = sample(n)
- # Returned X should not contain an intercept column (it's an argument of estimation
- # methods)
- list("X"=X[shuffle,-d], "Y"=Y[shuffle], "index"=index[shuffle])
+ shuffle <- sample(n)
+ list("X"=X[shuffle,], "Y"=Y[shuffle], "index"=index[shuffle])
}