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cor

Fast calculations of Pearson correlation.


Description

These functions implements a faster calculation of (weighted) Pearson correlation.

The speedup against the R's standard cor function will be substantial particularly if the input matrix only contains a small number of missing data. If there are no missing data, or the missing data are numerous, the speedup will be smaller.

Usage

cor(x, y = NULL, 
    use = "all.obs", 
    method = c("pearson", "kendall", "spearman"),
    weights.x = NULL,
    weights.y = NULL,
    quick = 0, 
    cosine = FALSE, 
    cosineX = cosine,
    cosineY = cosine, 
    drop = FALSE,
    nThreads = 0, 
    verbose = 0, indent = 0)

corFast(x, y = NULL, 
    use = "all.obs", 
    quick = 0, nThreads = 0, 
    verbose = 0, indent = 0)

cor1(x, use = "all.obs", verbose = 0, indent = 0)

Arguments

x

a numeric vector or a matrix. If y is null, x must be a matrix.

y

a numeric vector or a matrix. If not given, correlations of columns of x will be calculated.

use

a character string specifying the handling of missing data. The fast calculations currently support "all.obs" and "pairwise.complete.obs"; for other options, see R's standard correlation function cor. Abbreviations are allowed.

method

a character string specifying the method to be used. Fast calculations are currently available only for "pearson".

weights.x

optional observation weights for x. A matrix of the same dimensions as x, containing non-negative weights. Only used in fast calculations: methods must be "pearson" and use must be one of "all.obs", "pairwise.complete.obs".

weights.y

optional observation weights for y. A matrix of the same dimensions as y, containing non-negative weights. Only used in fast calculations: methods must be "pearson" and use must be one of "all.obs", "pairwise.complete.obs".

quick

real number between 0 and 1 that controls the precision of handling of missing data in the calculation of correlations. See details.

cosine

logical: calculate cosine correlation? Only valid for method="pearson". Cosine correlation is similar to Pearson correlation but the mean subtraction is not performed. The result is the cosine of the angle(s) between (the columns of) x and y.

cosineX

logical: use the cosine calculation for x? This setting does not affect y and can be used to give a hybrid cosine-standard correlation.

cosineY

logical: use the cosine calculation for y? This setting does not affect x and can be used to give a hybrid cosine-standard correlation.

drop

logical: should the result be turned into a vector if it is effectively one-dimensional?

nThreads

non-negative integer specifying the number of parallel threads to be used by certain parts of correlation calculations. This option only has an effect on systems on which a POSIX thread library is available (which currently includes Linux and Mac OSX, but excludes Windows). If zero, the number of online processors will be used if it can be determined dynamically, otherwise correlation calculations will use 2 threads. Note that this option does not affect what is usually the most expensive part of the calculation, namely the matrix multiplication. The matrix multiplication is carried out by BLAS routines provided by R; these can be sped up by installing a fast BLAS and making R use it.

verbose

Controls the level of verbosity. Values above zero will cause a small amount of diagnostic messages to be printed.

indent

Indentation of printed diagnostic messages. Each unit above zero adds two spaces.

Details

The fast calculations are currently implemented only for method="pearson" and use either "all.obs" or "pairwise.complete.obs". The corFast function is a wrapper that calls the function cor. If the combination of method and use is implemented by the fast calculations, the fast code is executed; otherwise, R's own correlation cor is executed.

The argument quick specifies the precision of handling of missing data. Zero will cause all calculations to be executed precisely, which may be significantly slower than calculations without missing data. Progressively higher values will speed up the calculations but introduce progressively larger errors. Without missing data, all column means and variances can be pre-calculated before the covariances are calculated. When missing data are present, exact calculations require the column means and variances to be calculated for each covariance. The approximate calculation uses the pre-calculated mean and variance and simply ignores missing data in the covariance calculation. If the number of missing data is high, the pre-calculated means and variances may be very different from the actual ones, thus potentially introducing large errors. The quick value times the number of rows specifies the maximum difference in the number of missing entries for mean and variance calculations on the one hand and covariance on the other hand that will be tolerated before a recalculation is triggered. The hope is that if only a few missing data are treated approximately, the error introduced will be small but the potential speedup can be significant.

Value

The matrix of the Pearson correlations of the columns of x with columns of y if y is given, and the correlations of the columns of x if y is not given.

Note

The implementation uses the BLAS library matrix multiplication function for the most expensive step of the calculation. Using a tuned, architecture-specific BLAS may significantly improve the performance of this function.

The values returned by the corFast function may differ from the values returned by R's function cor by rounding errors on the order of 1e-15.

Author(s)

Peter Langfelder

References

Peter Langfelder, Steve Horvath (2012) Fast R Functions for Robust Correlations and Hierarchical Clustering. Journal of Statistical Software, 46(11), 1-17. https://www.jstatsoft.org/v46/i11/

See Also

R's standard Pearson correlation function cor.

Examples

## Test the speedup compared to standard function cor

# Generate a random matrix with 200 rows and 1000 columns

set.seed(10)
nrow = 100;
ncol = 500;
data = matrix(rnorm(nrow*ncol), nrow, ncol);

## First test: no missing data

system.time( {corStd = stats::cor(data)} );

system.time( {corFast = cor(data)} );

all.equal(corStd, corFast)

# Here R's standard correlation performs very well.

# We now add a few missing entries.

data[sample(nrow, 10), 1] = NA;

# And test the correlations again...

system.time( {corStd = stats::cor(data, use ='p')} );

system.time( {corFast = cor(data, use = 'p')} );

all.equal(corStd, corFast)

# Here the R's standard correlation slows down considerably
# while corFast still retains it speed. Choosing
# higher ncol above will make the difference more pronounced.

WGCNA

Weighted Correlation Network Analysis

v1.70-3
GPL (>= 2)
Authors
Peter Langfelder <Peter.Langfelder@gmail.com> and Steve Horvath <SHorvath@mednet.ucla.edu> with contributions by Chaochao Cai, Jun Dong, Jeremy Miller, Lin Song, Andy Yip, and Bin Zhang
Initial release
2021-02-17

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