Learn R Programming

sensitivity (version 1.10.1)

sb: Sequential Bifurcations

Description

sb implements the Sequential Bifurcations screening method (Bettonvil and Kleijnen 1996).

Usage

sb(p, sign = rep("+", p), interaction = FALSE)
## S3 method for class 'sb':
ask(x, i = NULL, \dots)
## S3 method for class 'sb':
tell(x, y, \dots)
## S3 method for class 'sb':
print(x, \dots)
## S3 method for class 'sb':
plot(x, \dots)

Arguments

p
number of factors.
sign
a vector fo length p filled with "+" and "-", giving the (assumed) signs of the factors effects.
interaction
a boolean, TRUE if the model is supposed to be with interactions, FALSE otherwise.
x
a list of class "sb" storing the state of the screening study at the current iteration.
y
a vector of model responses.
i
an integer, used to force a wanted bifurcation instead of that proposed by the algorithm.
...
not used.

Value

  • sb returns a list of class "sb", containing all the input arguments detailed before, plus the following components:
  • ithe vector of bifurcations.
  • ythe vector of observations.
  • ymthe vector of mirror observations (model with interactions only).
  • The groups effects can be displayed with the print method.

Details

The model without interaction is $$Y=\beta_0 + \sum_{i=1}^p \beta_i X_i$$ while the model with interactions is $$Y=\beta_0 + \sum_{i=1}^p \beta_i X_i + \sum_{1 \leq i < j \leq p} \gamma_{ij} X_i X_j$$ In both cases, the factors are assumed to be uniformly distributed on $[-1,1]$. This is a difference with Bettonvil et al. where the factors vary across $[0,1]$ in the former case, while $[-1,1]$ in the latter. Another difference with Bettonvil et al. is that in the current implementation, the groups are splitted right in the middle.

References

B. Bettonvil and J. P. C. Kleijnen, 1996, Searching for important factors in simulation models with many factors: sequential bifurcations, European Journal of Operational Research, 96, 180--194.

Examples

Run this code
# a model with interactions
p <- 50
beta <- numeric(length = p)
beta[1:5] <- runif(n = 5, min = 10, max = 50)
beta[6:p] <- runif(n = p - 5, min = 0, max = 0.3)
beta <- sample(beta)
gamma <- matrix(data = runif(n = p^2, min = 0, max = 0.1), nrow = p, ncol = p)
gamma[lower.tri(gamma, diag = TRUE)] <- 0
gamma[1,2] <- 5
gamma[5,9] <- 12
f <- function(x) { return(sum(x * beta) + (x %*% gamma %*% x))}

# 10 iterations of SB
sa <- sb(p, interaction = TRUE)
for (i in 1 : 10) {
  x <- ask(sa)
  y <- list()
  for (i in names(x)) {
    y[[i]] <- f(x[[i]])
  }
  tell(sa, y)
}
print(sa)
plot(sa)

Run the code above in your browser using DataLab