The R package for Simulation with Kernel Density Estimation
- Generates random values from a univariate and multivariate continuous distribution by using kernel density estimation based on a sample.
- Finds the best fitting distribution from supported univariate continuous distributions for given data.
https://cran.r-project.org/package=simukde
## 1-dimensional data
data(faithful)
hist(faithful$eruptions)
res <- simukde::simulate_kde(x = faithful$eruptions, n = 1000)
hist(res$random.values)
## Simulation with the best fitting instrumental distribution
data(faithful)
par(mfrow = c(1, 3))
hist(faithful$eruptions)
fit <- simukde::find_best_fit(x = faithful$eruptions, positive = TRUE)
res <- simukde::simulate_kde(
x = faithful$eruptions, n = 1000,
distr = fit$distribution, parallel = FALSE
)
hist(res$random.values)
par(mfrow = c(1, 1))
## 2-dimensional data
data(faithful)
res <- simukde::simulate_kde(x = faithful, n = 100)
plot(res$kde, display = "filled.contour")
points(x = res$random.values, cex = 0.25, pch = 16, col = "green")
points(x = faithful, cex = 0.25, pch = 16, col = "black")
From CRAN
install.packages("simukde")
From the repository on GitHub
install.packages("devtools")
devtools::install_github("galaamn/simukde")
MAKHGAL Ganbold and BAYARBAATAR Amgalan, National University of Mongolia
© 2018 Makhgal Ganbold and BAYARBAATAR Amgalan
Funding: This package has been done within the framework of the project Statistics and Optimization Based Methods for Identification of Cancer-Activated Biological Processes (P2017-2519) supported by the Asia Research Center, Mongolia and Korea Foundation for Advanced Studies, Korea.
The funders had no role in study design, analysis, decision to publish, or preparation of the package.