Evaluate Optimal Transport indices on one dimensional outputs
ot_indices_1d(
x,
y,
M,
p = 2,
boot = FALSE,
R = NULL,
parallel = "no",
ncpus = 1,
conf = 0.95,
type = "norm"
)
A gsaot_indices
object containing:
method
: a string that identifies the type of indices computed.
indices
: a names array containing the sensitivity indices between 0 and 1
for each column in x, indicating the influence of each input variable on
the output variables.
bound
: a double representing the upper bound of the separation measure or
an array representing the mean of the separation for each input according
to the bootstrap replicas.
x
, y
: input and output data provided as arguments of the function.
inner_statistic
: a list of matrices containing the values of the inner
statistics for the partitions defined by partitions
. If method = wasserstein-bures
, each matrix has three rows containing the
Wasserstein-Bures indices, the Advective, and the Diffusive components.
partitions
: a matrix containing the partitions built to calculate the
sensitivity indices. Each column contains the partition associated to the
same column in x
. If boot = TRUE
, the object contains also:
indices_ci
: a data.frame
with first column the input, second and third
columns the lower and upper bound of the confidence interval.
inner_statistic_ci
: a list of matrices. Each element of the list contains
the lower and upper confidence bounds for the partition defined by the row.
bound_ci
: a list containing the lower and upper bounds of the confidence
intervals of the separation measure bound.
type
, conf
: type of confidence interval and confidence level, provided
as arguments.
A matrix or data.frame containing the input(s) values. The values
can be numeric, factors, or strings. The type of data changes the
partitioning. If the values are continuous (double), the function
partitions the data into M
sets. If the values are discrete (integers,
strings, factors), the number of partitioning sets is data-driven.
An array containing the output values.
A scalar representing the number of partitions for continuous inputs.
A numeric representing the p-norm Lp used as ground cost in the Optimal Transport problem.
(default FALSE
) Logical that sets whether or not to perform
bootstrapping of the OT indices.
(default NULL
) Positive integer, number of bootstrap replicas.
(default "no"
) The type of parallel operation to be used
(if any). If missing, the default is taken from the option boot.parallel
(and if that is not set, "no"
). Only considered if boot = TRUE
. For
more information, check the boot::boot()
function.
(default 1
) Positive integer: number of processes to be used
in parallel operation: typically one would chose this to the number of
available CPUs. Check the ncpus
option in the boot::boot()
function of
the boot package.
(default 0.95
) Number between 0
and 1
representing the
confidence level. Only considered if boot = TRUE
.
(default "norm"
) Method to compute the confidence interval.
Only considered if boot = TRUE
. For more information, check the type
option of boot::boot.ci()
.
ot_indices()
, ot_indices_wb()
x <- rnorm(1000)
y <- 10 * x
ot_indices_1d(data.frame(x), y, 30)
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