wTO.fast | R Documentation |
Compute the wTO and also the bootstraps. Proposed at arXiv:1711.04702. This is a quicker version of the wTO.Complete. It doesn't contain diagnose plots nor a parallel version.
wTO.fast( Data, Overlap = row.names(Data), method = "p", sign = "sign", delta = 0.2, n = 10, method_resampling = "Bootstrap", lag = NULL, ID = NULL )
Data |
data.frame containing the count / expression data for the correlation. |
Overlap |
Set of nodes of interest, where the Overlapping weights will be computed. |
method |
Type of the correlation that should be used. "s" / "spearman" will compute the rank spearman correlation, "p" / "pearson" will compute the linear correlation. If no value is given, the default is to use "p". |
sign |
Should the wTO be signed? |
delta |
expected difference between the real wTO and the bootstraped. |
n |
Number of resamplings, used to compute the empirical distribuitions of the links. Default is set to 100. |
method_resampling |
method of the resampling. Bootstrap or BlockBootstrap.If the second is used, please give the lag (time dependency among the data). |
lag |
Time dependency for the blocked bootstrap (for time series). |
ID |
ID of the samples for the blocked bootstrap (for repeated measures). |
Deisy Morselli Gysi <deisy at bioinf.uni-leipzig.de>
# wTO.fast(Data = Microarray_Expression1, # Overlap = ExampleGRF$x, # method = "p") # For a time series with lag = 4 # wTO.fast(Data = Microarray_Expression1, # Overlap = ExampleGRF$x, # method = "p", # method_resampling = 'BlockBootstrap', # lag = 4) # For a study where the individuals were measured multiple times. # wTO.fast(Data = Microarray_Expression1, # Overlap = ExampleGRF$x, # method = "p", # method_resampling = 'BlockBootstrap', # ID = rep(1:9, each= 2))
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