Description Usage Arguments Value Author(s)
View source: R/bivariateSignal.R
This function transforms the two matrices CN and fracB in one matrix which is used in the lars algorithm. Each signal is weighted
1 2  | HDlarsbivariate(CN, fracB, y, weightsCN = 1/apply(CN, 1, sd),
  weightsFracB = 1/apply(fracB, 1, sd), meanCN = 2, maxSteps, eps)
 | 
CN | 
 matrix containing copy-number signals. Each row corresponds to a different signal.  | 
fracB | 
 matrix containing copy-number signals. Each row corresponds to a different signal.  | 
y | 
 vector containing the response associated to each signal  | 
weightsCN | 
 vector of length nrow(CN); weights associated to each signal for the copy-number signal  | 
weightsFracB | 
 vector of length nrow(fracB); weights associated to each signal for the copy-number signal  | 
meanCN | 
 value for centering the copy-number signal (default value = 2)  | 
maxSteps | 
 maximum number of steps for the lars algorithm  | 
eps | 
 tolerance  | 
a LarsPath object
Quentin Grimonprez
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.