Revert to previous x_init settings in optimParams (keeping the initial one)
[morpheus.git] / pkg / R / sampleIO.R
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1#' Generate sample inputs-outputs
2#'
3#' Generate input matrix X of size nxd and binary output of size n, where Y is subdivided
4#' into K groups of proportions p. Inside one group, the probability law P(Y=1) is
5#' described by the corresponding column parameter in the matrix β + intercept b.
6#'
7#' @param n Number of individuals
0f5fbd13 8#' @param p Vector of K(-1) populations relative proportions (sum (<)= 1)
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9#' @param β Vectors of model parameters for each population, of size dxK
10#' @param b Vector of intercept values (use rep(0,K) for no intercept)
11#' @param link Link type; "logit" or "probit"
12#'
13#' @return A list with
14#' \itemize{
15#' \item{X: the input matrix (size nxd)}
16#' \item{Y: the output vector (size n)}
17#' \item{index: the population index (in 1:K) for each row in X}
18#' }
19#'
20#' @export
21generateSampleIO = function(n, p, β, b, link)
22{
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23 # Check arguments
24 tryCatch({n = as.integer(n)}, error=function(e) stop("Cannot convert n to integer"))
25 if (length(n) > 1)
26 warning("n is a vector but should be scalar: only first element used")
27 if (n <= 0)
28 stop("n: positive integer")
29 if (!is.matrix(β) || !is.numeric(β) || any(is.na(β)))
30 stop("β: real matrix, no NAs")
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31 K <- ncol(β)
32 if (!is.numeric(p) || length(p)<K-1 || any(is.na(p)) || any(p<0) || sum(p) > 1)
33 stop("p: positive vector of size >= K-1, no NA, sum(<)=1")
34 if (length(p) == K-1)
35 p <- c(p, 1-sum(p))
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36 if (!is.numeric(b) || length(b)!=K || any(is.na(b)))
37 stop("b: real vector of size K, no NA")
cbd88fe5 38
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39 # Random generation of the size of each population in X~Y (unordered)
40 classes <- rmultinom(1, n, p)
cbd88fe5 41
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42 d <- nrow(β)
43 zero_mean <- rep(0,d)
44 id_sigma <- diag(rep(1,d))
45 X <- matrix(nrow=0, ncol=d)
46 Y <- c()
47 index <- c()
48 for (i in 1:K)
6dd5c2ac 49 {
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50 index <- c(index, rep(i, classes[i]))
51 newXblock <- MASS::mvrnorm(classes[i], zero_mean, id_sigma)
52 arg_link <- newXblock %*% β[,i] + b[i]
53 probas <-
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54 if (link == "logit")
55 {
56 e_arg_link = exp(arg_link)
57 e_arg_link / (1 + e_arg_link)
58 }
59 else #"probit"
60 pnorm(arg_link)
61 probas[is.nan(probas)] = 1 #overflow of exp(x)
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62 X <- rbind(X, newXblock)
63 Y <- c( Y, vapply(probas, function(p) (rbinom(1,1,p)), 1) )
6dd5c2ac 64 }
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65 shuffle <- sample(n)
66 list("X"=X[shuffle,], "Y"=Y[shuffle], "index"=index[shuffle])
cbd88fe5 67}