library("broadcast")
# variances ====
vc <- datasets::ability.cov$cov
X <- matrix(rnorm(100), 100, ncol(vc))
solve(vc)
#> general picture blocks maze reading
#> general 0.082259001 -0.0312406436 -7.750932e-03 -0.013309494 -2.061705e-02
#> picture -0.031240644 0.2369906996 -2.484938e-02 0.017844845 8.603286e-04
#> blocks -0.007750932 -0.0248493822 1.344272e-02 -0.012544830 -3.802671e-05
#> maze -0.013309494 0.0178448450 -1.254483e-02 0.101625400 5.508423e-03
#> reading -0.020617049 0.0008603286 -3.802671e-05 0.005508423 5.713620e-02
#> vocab -0.002420800 0.0019394999 -1.157864e-03 -0.002857265 -2.406969e-02
#> vocab
#> general -0.002420800
#> picture 0.001939500
#> blocks -0.001157864
#> maze -0.002857265
#> reading -0.024069692
#> vocab 0.020323179
cinv(vc) # faster than `solve()`, but only works on positive definite matrices
#> [,1] [,2] [,3] [,4] [,5]
#> [1,] 0.082259001 -0.0312406436 -7.750932e-03 -0.013309494 -2.061705e-02
#> [2,] -0.031240644 0.2369906996 -2.484938e-02 0.017844845 8.603286e-04
#> [3,] -0.007750932 -0.0248493822 1.344272e-02 -0.012544830 -3.802671e-05
#> [4,] -0.013309494 0.0178448450 -1.254483e-02 0.101625400 5.508423e-03
#> [5,] -0.020617049 0.0008603286 -3.802671e-05 0.005508423 5.713620e-02
#> [6,] -0.002420800 0.0019394999 -1.157864e-03 -0.002857265 -2.406969e-02
#> [,6]
#> [1,] -0.002420800
#> [2,] 0.001939500
#> [3,] -0.001157864
#> [4,] -0.002857265
#> [5,] -0.024069692
#> [6,] 0.020323179
all(round(solve(vc), 6) == round(cinv(vc), 6)) # they're the same
#> [1] TRUE
sd_lc(X, vc)
#> [1] 48.2544592 54.4871481 29.2948470 58.4651075 51.9000504 37.2946414
#> [7] 40.0252442 30.9806890 10.4651803 4.5098208 18.4556678 118.1984575
#> [13] 30.9785280 4.2218147 48.7257672 3.8350982 13.6478549 16.8464738
#> [19] 14.5617050 15.6778036 18.2642797 57.0860369 50.4779093 33.5803748
#> [25] 7.8182864 48.9596929 20.1718510 29.3492426 12.3651057 35.5752997
#> [31] 16.7273135 66.9839655 22.0691344 23.6967639 22.5898203 10.5927278
#> [37] 2.6633303 2.5746736 15.4836023 3.6537907 47.4352913 34.1369533
#> [43] 25.7966501 17.9912683 26.4463014 79.8250731 13.6475285 13.5304931
#> [49] 39.9674254 81.6359217 42.2547585 6.6373829 2.3187327 16.8613547
#> [55] 22.8295513 41.5723850 9.9314439 16.2153181 11.3454051 12.5142923
#> [61] 10.7689013 10.2963957 43.8797247 12.2690452 46.8058054 31.5504886
#> [67] 11.6898774 7.3922440 23.5122294 22.1635504 26.7085001 33.3231809
#> [73] 25.2109909 7.5772314 46.3662775 23.7979601 5.5902934 16.4327036
#> [79] 19.7443232 0.8461569 16.6701866 28.8192204 6.6763255 14.1513391
#> [85] 6.8439557 36.1030322 12.5108712 9.8673244 41.0876664 61.2117062
#> [91] 13.0025039 37.6769788 2.6743123 33.3814862 33.9094007 65.1975323
#> [97] 42.7461948 45.1901357 42.3767793 3.5578897
# ecumprob() ====
sim <- rnbinom(10 * 1e4, mu = 3, size = 2) |> matrix(10, 1e4)
y <- sample(0:9)
# vector:
pnbinom(y[1], mu = 3, size = 2) # real probability
#> [1] 0.76672
ecumprob(y[1], sim[1, , drop = TRUE]) # approximation
#> [1] 0.77
# matrix:
cbind(
real = pnbinom(y, mu = 3, size = 2), # real probability
approx = ecumprob(y, sim) # approximation
)
#> real approx
#> [1,] 0.7667200 0.7700
#> [2,] 0.9536426 0.9527
#> [3,] 0.1600000 0.1606
#> [4,] 0.9697669 0.9693
#> [5,] 0.6630400 0.6652
#> [6,] 0.5248000 0.5284
#> [7,] 0.9294561 0.9319
#> [8,] 0.8413696 0.8376
#> [9,] 0.3520000 0.3442
#> [10,] 0.8936243 0.8972
# data.frame:
cbind(
real = pnbinom(y, mu = 3, size = 2), # real probability
approx = ecumprob(y, as.data.frame(sim)) # approximation
)
#> real approx
#> [1,] 0.7667200 0.7700
#> [2,] 0.9536426 0.9527
#> [3,] 0.1600000 0.1606
#> [4,] 0.9697669 0.9693
#> [5,] 0.6630400 0.6652
#> [6,] 0.5248000 0.5284
#> [7,] 0.9294561 0.9319
#> [8,] 0.8413696 0.8376
#> [9,] 0.3520000 0.3442
#> [10,] 0.8936243 0.8972linear_algebra_stats
Simple Linear Algebra Functions for Statistics
Description
‘broadcast’ provides some simple Linear Algebra Functions for Statistics:
cinv()
sd_lc()
ecumprob()
Usage
cinv(x)
sd_lc(X, vc, bad_rp = NaN)
ecumprob(y, sim, eps = 0)
Arguments
x
|
a real symmetric positive-definite square matrix. |
X
|
a numeric (or logical) matrix of multipliers/constants |
vc
|
the variance-covariance matrix for the (correlated) random variables. |
bad_rp
|
if vc is not a Positive (semi-) Definite matrix, give here the value to replace bad standard deviations with. |
y
|
values to estimate the cumulative probability for. |
sim
|
a matrix (or data.frame) with at least 500 columns of simulated values. If sim is given as a dimensionless vector, it will be treated as a matrix with 1 row and length(sim) columns, and this will be noted with a message.
|
eps
|
a non-negative numeric scaler smaller than 0.1, giving the cut-off value for probabilities. Probabilities smaller than eps will be replaced with eps, and probabilities larger than 1 - eps will be replaced with 1 - eps. Set eps = 0 to disable probability trimming.
|
Details
cinv()
cinv() computes the Choleski inverse of a real symmetric positive-definite square matrix.
sd_lc()
Given the linear combination X %*% b, where:
-
Xis a matrix of multipliers/constants; -
bis a vector of (correlated) random variables; -
vcis the symmetric variance-covariance matrix forb;
sd_lc(X, vc) computes the standard deviations for the linear combination X %*% b, without making needless copies.
sd_lc(X, vc) will use much less memory than a base ‘R’ approach.
sd_lc(X, vc) will usually be faster than a base ‘R’ approach (depending on the Linear Algebra Library used for base ‘R’).
ecumprob()
The ecumprod(y, sim) function takes a matrix (or data.frame) of simulated values sim, and for each row i (after broadcasting), estimates the cumulative distribution function of sim[i, ], and returns the cumulative probability for y[i].
In terms of statistics, it is equivalent to the following operation for each index i:
ecdf(sim[i,])(y[i])
However, ecumprob() is much faster, and supports NAs/NaNs.
In terms of linear algebra, it is equivalent to the following broadcasted operation:
rowMeans(sim <= y)
where y and sim are broadcaster arrays.
However, ecumprob() is much more memory-efficient, supports a data.frame for sim, and has statistical safety checks.
Value
For cinv():
A matrix.
For sd_lc():
A vector of standard deviations.
For ecumprob():
A vector of cumulative probabilities.
If for any observation i (after broadcasting,) y[i] is NA/NaN or any of sim[i,] is NA/NaN, the result for i will be NA.
If zero-length y or sim is given, a zero-length numeric vector is returned.
References
John A. Rice (2007), Mathematical Statistics and Data Analysis (6th Edition)
See Also
chol, chol2inv