tensor | R Documentation |
Infers the underlying (sources by features by observations) 3D tensor from the observed (features by observations) 2D mixture, under the assumption of the Unico model that each observation is a mixture of unique source-specific values (in each feature in the data). In the context of bulk genomics containing a mixture of cell types (i.e. the input could be CpG sites by individuals for DNA methylation and genes by individuals for RNA expression), tensor
allows to estimate the cell-type-specific levels for each individual in each CpG site/gene (i.e. a tensor of CpG sites/genes by individuals by cell types).
tensor(
X,
W,
C1,
C2,
Unico.mdl,
parallel = TRUE,
num_cores = NULL,
log_file = "Unico.log",
verbose = FALSE,
debug = FALSE
)
X |
An |
W |
An |
C1 |
An |
C2 |
An |
Unico.mdl |
The entire set of model parameters estimated by Unico on the 2D mixture matrix (i.e. the list returned by applying function |
parallel |
A logical value indicating whether to use parallel computing (possible when using a multi-core machine). |
num_cores |
A numeric value indicating the number of cores to use (activated only if |
log_file |
A path to an output log file. Note that if the file |
verbose |
A logical value indicating whether to print logs. |
debug |
A logical value indicating whether to set the logger to a more detailed debug level; set |
After obtaining all the estimated parameters in the Unico model (by calling Unico), tensor
uses the conditional distribution Z_{jh}^i|X_{ij}=x_{ij}
for estimating the k
source-specific levels of each sample i
at each feature j
.
A k
by m
by n
array with the estimated source-specific values. The first axis/dimension in the array corresponds to the different sources.
data = simulate_data(n=100, m=2, k=3, p1=1, p2=1, taus_std=0, log_file=NULL)
res = list()
res$params.hat = Unico(data$X, data$W, data$C1, data$C2, parallel=FALSE, log_file=NULL)
res$Z = tensor(data$X, data$W, data$C1, data$C2, res$params.hat, parallel=FALSE, log_file=NULL)
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