
mlsjunkgen is a pseudo-random number
generator.
For any seed values of w, x, y, z:
ri = 5.980217w2 + 9.446377x0.25 + 4.81379y0.33 + 8.91197z0.5
ri = ri - Int(ri)
For ri+1:
w = x
x = y
y = z
z = ri
This generator tends to do well with various tests for randomness (K-S, Chi Square, test for runs up and down). It may not perform as well on other tests (e.g., tests for runs above and below the mean), but that could relate to my choice of seeds. As a point of reference, the period of Excel’s built-in random number generator is 16,777,216 and the MLS Junk Generator’s period is something greater than 9.9 billion (the point at which I gave up on trying to determine it).
mlsjunkgen is available on CRAN and can
be installed accordingly:install.packages("mlsjunkgen")
library(mlsjunkgen)mlsjunkgen from GitHub using the
devtools package:install.packages("devtools")
library("devtools")
install_github("scumdogsteev/mlsjunkgen")
library(mlsjunkgen)The package consists of four functions:
junkgen - generates a pseudo-random number from
user-specified seedsmlsjunkgenv - generates a vector of pseudo-random
numbers by calling junkgen a user-specified number of
timesmlsjunkgend - generates a data frame of pseudo-random
numbers by calling junkgen a user-specified number of
timesmlsjunkgenm - generates a user-specified size matrix of
pseudo-random numbers by calling mlsjunkgenv and assigning
the results to a matrixjunkgen generates a single
pseudo-random number based on four user-specified seeds:
w <- 1
x <- 2
y <- 3
z <- 4
junkgen(w = w, x = x, y = y, z = z)
#> [1] 0.9551644mlsjunkgenv generates a vector
containing a stream of n (default = 1) user-specified
pseudo-random numbers based on four user-specified seeds rounded to a
specified (default = 5) number of decimal places:
mlsjunkgenv(n = 10, w = w, x = x, y = y, z = z, round = 2)
#> [1] 0.96 0.67 0.21 0.34 0.12 0.56 0.59 0.11 0.34 0.70The same example with default rounding:
mlsjunkgenv(n = 10, w = w, x = x, y = y, z = z)
#> [1] 0.95516 0.66908 0.21235 0.34488 0.11995 0.56398 0.59235 0.11432 0.33525
#> [10] 0.70271mlsjunkgend generates a data frame
containing a stream of n user-specified pseudo-random
numbers based on four user-specified seeds:
mlsjunkgend(n = 10, w = w, x = x, y = y, z = z, round = 2)
#> RN
#> 1 0.96
#> 2 0.67
#> 3 0.21
#> 4 0.34
#> 5 0.12
#> 6 0.56
#> 7 0.59
#> 8 0.11
#> 9 0.34
#> 10 0.70The same example with default rounding:
mlsjunkgend(n = 10, w = w, x = x, y = y, z = z)
#> RN
#> 1 0.95516
#> 2 0.66908
#> 3 0.21235
#> 4 0.34488
#> 5 0.11995
#> 6 0.56398
#> 7 0.59235
#> 8 0.11432
#> 9 0.33525
#> 10 0.70271mlsjunkgenm generates a matrix of
user-specified size containing a stream of pseudo-random numbers based
on four user-specified seeds:
mlsjunkgenm(nrow = 5, ncol = 5, w = w, x = x, y = y, z = z, round = 3)
#> [,1] [,2] [,3] [,4] [,5]
#> [1,] 0.955 0.564 0.418 0.052 0.020
#> [2,] 0.669 0.592 0.313 0.663 0.110
#> [3,] 0.212 0.114 0.920 0.802 0.685
#> [4,] 0.345 0.335 0.379 0.160 0.286
#> [5,] 0.120 0.703 0.280 0.586 0.452