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All the tests were done on an Arch Linux x86_64 machine with an Intel(R) Core(TM) i7 CPU (1.90GHz).

Empirical likelihood computation

We show the performance of computing empirical likelihood with el_mean(). We test the computation speed with simulated data sets in two different settings: 1) the number of observations increases with the number of parameters fixed, and 2) the number of parameters increases with the number of observations fixed.

Increasing the number of observations

We fix the number of parameters at p=10p = 10, and simulate the parameter value and n×pn \times p matrices using rnorm(). In order to ensure convergence with a large nn, we set a large threshold value using el_control().

library(ggplot2)
library(microbenchmark)
set.seed(3175775)
p <- 10
par <- rnorm(p, sd = 0.1)
ctrl <- el_control(th = 1e+10)
result <- microbenchmark(
  n1e2 = el_mean(matrix(rnorm(100 * p), ncol = p), par = par, control = ctrl),
  n1e3 = el_mean(matrix(rnorm(1000 * p), ncol = p), par = par, control = ctrl),
  n1e4 = el_mean(matrix(rnorm(10000 * p), ncol = p), par = par, control = ctrl),
  n1e5 = el_mean(matrix(rnorm(100000 * p), ncol = p), par = par, control = ctrl)
)

Below are the results:

result
#> Unit: microseconds
#>  expr        min         lq        mean     median          uq        max neval
#>  n1e2    465.678    506.369    559.3217    557.620    607.1425    754.787   100
#>  n1e3   1195.100   1449.303   1570.1170   1534.537   1660.3610   2714.692   100
#>  n1e4  11134.506  12784.237  15077.9767  15410.175  16540.7925  21501.439   100
#>  n1e5 180928.122 218263.285 253547.7375 244287.308 273499.6630 429929.306   100
#>  cld
#>  a  
#>  a  
#>   b 
#>    c
autoplot(result)
#> Warning: `aes_string()` was deprecated in ggplot2 3.0.0.
#>  Please use tidy evaluation idioms with `aes()`.
#>  See also `vignette("ggplot2-in-packages")` for more information.
#>  The deprecated feature was likely used in the microbenchmark package.
#>   Please report the issue at
#>   <https://github.com/joshuaulrich/microbenchmark/issues/>.
#> This warning is displayed once per session.
#> Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
#> generated.

Increasing the number of parameters

This time we fix the number of observations at n=1000n = 1000, and evaluate empirical likelihood at zero vectors of different sizes.

n <- 1000
result2 <- microbenchmark(
  p5 = el_mean(matrix(rnorm(n * 5), ncol = 5),
    par = rep(0, 5),
    control = ctrl
  ),
  p25 = el_mean(matrix(rnorm(n * 25), ncol = 25),
    par = rep(0, 25),
    control = ctrl
  ),
  p100 = el_mean(matrix(rnorm(n * 100), ncol = 100),
    par = rep(0, 100),
    control = ctrl
  ),
  p400 = el_mean(matrix(rnorm(n * 400), ncol = 400),
    par = rep(0, 400),
    control = ctrl
  )
)
result2
#> Unit: microseconds
#>  expr        min          lq        mean      median          uq        max
#>    p5    728.338    801.5155    889.0228    854.4235    901.6215   4623.864
#>   p25   2817.665   2896.8375   3031.3995   3005.9360   3070.5965   6780.194
#>  p100  22031.297  24659.5240  26886.2712  25113.9410  29711.1250  45891.396
#>  p400 245384.680 270880.8490 306264.5269 293090.3535 331581.8935 446844.972
#>  neval cld
#>    100 a  
#>    100 a  
#>    100  b 
#>    100   c
autoplot(result2)

On average, evaluating empirical likelihood with a 100000×10 or 1000×400 matrix at a parameter value satisfying the convex hull constraint takes less than a second.