permutation_test: Compare Two Networks from Sequence Data Using Permutation Tests
Description
This function compares two networks built from sequence data using
permutation tests. The function builds Markov models for two sequence
objects, computes the transition probabilities, and compares them by
performing permutation tests. It returns the differences in transition
probabilities, effect sizes, p-values, and confidence intervals.
Usage
permutation_test(
x,
y,
iter = 1000,
paired = FALSE,
level = 0.05,
measures = character(0),
...
)
Value
A tna_permutation object which is a list with two elements:
edges and centralities, both containing the following elements
stats: A data.frame of original differences, effect sizes, and
p-values for each edge or centrality measure. The effect size is
computed as the observed difference divided by the standard deviation
of the differences of the permuted samples.
diffs_true: A matrix of differences in the data.
diffs_sig: A matrix showing the significant differences.
Arguments
x
A tna object containing sequence data for the first tna model.
y
A tna object containing sequence data for the second tna model.
iter
An integer giving the number of permutations to perform.
The default is 1000.
paired
A logical value. If TRUE, perform paired permutation tests;
if FALSE, perform unpaired tests. The default is FALSE.
level
A numeric value giving the significance level for the
permutation tests. The default is 0.05.
measures
A character vector of centrality measures to test.
See centralities() for a list of available centrality measures.
...
Additional arguments passed to centralities().
See Also
Evaluation and validation functions
bootstrap(),
prune(),
pruning_details()
model_x <- tna(group_regulation[1:200, ])
model_y <- tna(group_regulation[1001:1200, ])
# Small number of iterations for CRANpermutation_test(model_x, model_y, iter = 20)