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This package contains:
The base R function range returns the minimum and maximum of a vector, but the “range” is actually defined as the difference between the minimum and maximum. This function calculates the actual range. It is equivalent to the base R code diff(range(x))
, but a bit simpler and much faster.
x <- rnorm(1000)
all.equal(diff(range(x)), truerange(x))
#> [1] TRUE
as.data.frame(print(microbenchmark(diff(range(x)), truerange(x), times = 500)))
#> Unit: microseconds
#> expr min lq mean median uq max neval
#> diff(range(x)) 10.6 11.0 12.1178 11.2 11.6 55.2 500
#> truerange(x) 2.6 2.8 3.2316 3.1 3.3 17.3 500
expr | min | lq | mean | median | uq | max | neval |
---|---|---|---|---|---|---|---|
diff(range(x)) | 10.6 | 11.0 | 12.1178 | 11.2 | 11.6 | 55.2 | 500 |
truerange(x) | 2.6 | 2.8 | 3.2316 | 3.1 | 3.3 | 17.3 | 500 |
It isn’t hard to create body mass index (BMI) groups from continuous BMI values, but it is hard to remember how BMI values on the cutpoints get classified. The cutpoints according to the CDC are:
BMI values | Classification |
---|---|
< 18.5 | Underweight |
[18.5, 25) | Normal weight |
[25, 30) | Overweight |
>= 30 | Obese |
The function bmi3 creates 3 groups (lumping the first two above into “Normal weight”), while bmi4 creates 4 groups. Both return factor variables, with or without labels depending on labels
.
Normal weight | Overweight | Obese |
---|---|---|
32 | 21 | 47 |
[-Inf,18.5) | [18.5,25) | [25,30) | [30, Inf) |
---|---|---|---|
8 | 24 | 21 | 47 |
This function creates tables summarizing results of statistical simulations, providing common metrics of performance like mean bias, standard deviation, mean standard error, mean squared error, and confidence interval coverage.
To illustrate, suppose \(X_1, ..., X_n \sim N(\mu, \sigma^2)\), and we wish to compare two estimators for \(\sigma^2\): the MLE (\(n\) in denominator) vs. the sample variance (\(n-1\) in denominator).
MLE <- c()
s2 <- c()
for (ii in 1: 1000) {
x <- rnorm(n = 25)
MLE[ii] <- sum((x - mean(x))^2) / 25
s2[ii] <- sum((x - mean(x))^2) / 24
}
kable(sumsim(estimates = cbind(MLE, s2), truth = 1))
Mean bias | SD | MSE | |
---|---|---|---|
MLE | -0.053 | 0.280 | 0.081 |
s2 | -0.013 | 0.292 | 0.085 |
You can request different performance metrics through the statistics
input; some of them, like confidence interval coverage, require specifying ses
with standard errors.
The function moving_mean is one of dozens of moving average functions available in R. I’m not sure it’s the absolute fastest, but it is much faster than roll_mean in RcppRoll.
library("RcppRoll")
lengths <- c(10, 100, 1000, 10000)
multiples1 <- multiples2 <- c()
for (ii in 1: 4) {
n <- lengths[ii]
x <- rnorm(n)
medians <- summary(microbenchmark(roll_mean(x, 5), moving_mean(x, 5),
roll_mean(x, n / 5), moving_mean(x, n / 5),
times = 50))$median
multiples1[ii] <- medians[1] / medians[2]
multiples2[ii] <- medians[3] / medians[4]
}
par(mfrow = c(1, 2))
plot(1: 4, multiples1, type = "b", col = "blue", main = "5-unit MA",
ylab = "Speed multiple", xlab = "Vector length", xaxt = "n",
ylim = c(0, max(multiples1) * 1.05))
axis(side = 1, at = 1: 4, labels = lengths)
abline(h = 1)
plot(1: 4, multiples2, type = "b", col = "blue", main = "length(x)/5-unit MA",
ylab = "Speed multiple", xlab = "Vector length", xaxt = "n",
ylim = c(0, max(multiples2) * 1.05))
axis(side = 1, at = 1: 4, labels = lengths)
abline(h = 1)
This function is similar to the base R function hist
, but with two added features:
Can overlay one or more fitted probability density/mass functions (PDFs/PMFs) for any univariate distribution supported in R (see ?Distributions
).
Can generate more of a barplot type histogram, where each possible value gets its own bin centered over its value (useful for discrete variables with not too many possible values).
Here are two examples:
Eddelbuettel, Dirk. 2013. Seamless R and C++ Integration with Rcpp. New York: Springer. https://doi.org/10.1007/978-1-4614-6868-4.
Eddelbuettel, Dirk, and James Joseph Balamuta. 2017. “Extending extitR with extitC++: A Brief Introduction to extitRcpp.” PeerJ Preprints 5 (August): e3188v1. https://doi.org/10.7287/peerj.preprints.3188v1.
Eddelbuettel, Dirk, and Romain François. 2011. “Rcpp: Seamless R and C++ Integration.” Journal of Statistical Software 40 (8): 1–18. https://doi.org/10.18637/jss.v040.i08.
Ushey, Kevin. 2015. RcppRoll: Efficient Rolling / Windowed Operations. https://CRAN.R-project.org/package=RcppRoll.
Xie, Yihui. 2017. Printr: Automatically Print R Objects to Appropriate Formats According to the ’Knitr’ Output Format. https://CRAN.R-project.org/package=printr.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.