fasano.franceschini.test {fasano.franceschini.test}R Documentation

Fasano-Franceschini Test

Description

Performs a two-sample multivariate Kolmogorov-Smirnov test as described by Fasano and Franceschini (1987). This test evaluates the null hypothesis that two i.i.d. random samples were drawn from the same underlying probability distribution. The data can be of any dimension and of any type (continuous, discrete, or mixed).

Usage

fasano.franceschini.test(
  S1,
  S2,
  nPermute = 100,
  threads = 1,
  seed = NULL,
  verbose = TRUE,
  method = c("r", "b")
)

Arguments

S1

matrix or data.frame.

S2

matrix or data.frame.

nPermute

A nonnegative integer setting the number of permutations to use for performing the permutation test. Default is 100. If set to 0, only the test statistic is computed.

threads

A positive integer or "auto" setting the number of threads to use during the permutation test. If set to "auto", the number of threads is determined by RcppParallel::defaultNumThreads(). Default is 1.

seed

An optional integer to seed the PRNG used for the permutation test. A seed must be passed to reproducibly compute p-values.

verbose

A boolean indicating whether to display a progress bar. Default is TRUE. Only available when threads = 1.

method

An optional character indicating which method to use to compute the test statistic. The two methods are 'r' (range tree) and 'b' (brute force). Both methods return the same results but may vary in computation speed. If this argument is not passed, the sample sizes and dimension of the data are used to infer which method is likely faster. See the Details section for more information.

Details

The test statistic can be computed using two different methods. Both methods return identical results, but have different time complexities:

The range tree method tends to be faster for low dimensional data or large sample sizes, while the brute force method tends to be faster for high dimensional data or small sample sizes. When method is not passed, the sample sizes and dimension of the data are used to infer which method will likely be faster. However, as the geometry of the samples can influence computation time, the method inferred to be faster may not actually be faster. To perform more comprehensive benchmarking for a specific dataset, nPermute can be set equal to 0, which bypasses the permutation test and only computes the test statistic.

Value

A list of class htest containing the following components:

statistic

The value of the test statistic.

p.value

The permutation test p-value.

method

The name of the test.

data.name

The names of the original data objects.

References

Examples

set.seed(0)

# create 2-D samples
S1 <- data.frame(x = rnorm(n = 20, mean = 0, sd = 1),
                 y = rnorm(n = 20, mean = 1, sd = 2))
S2 <- data.frame(x = rnorm(n = 40, mean = 0, sd = 1),
                 y = rnorm(n = 40, mean = 1, sd = 2))

# perform test
fasano.franceschini.test(S1, S2)

# perform test with more permutations
fasano.franceschini.test(S1, S2, nPermute = 150)

# set seed for reproducible p-value
fasano.franceschini.test(S1, S2, seed = 0)$p.value
fasano.franceschini.test(S1, S2, seed = 0)$p.value

# perform test using range tree method
fasano.franceschini.test(S1, S2, method = 'r')

# perform test using brute force method
fasano.franceschini.test(S1, S2, method = 'b')

# perform test using multiple threads to speed up p-value computation
## Not run: 
fasano.franceschini.test(S1, S2, threads = 2)

## End(Not run)


[Package fasano.franceschini.test version 2.2.2 Index]