Additional parameters: lr_maxit and maxNWts are the same as in definition of multinom function from nnet package. An alternative model formula (using formula_string arguments) should be provided if data are not suitable for description by logistic regression (recommended only for advanced users). It is recommended to conduct estimation by calling capacity_logreg_main.R.
capacity_logreg_algorithm(
data,
signal = "signal",
response = "response",
side_variables = NULL,
formula_string = NULL,
model_out = TRUE,
cc_maxit = 100,
lr_maxit = 1000,
MaxNWts = 5000
)
a list with three elements:
output$cc - channel capacity in bits
output$p_opt - optimal probability distribution
output$regression - confusion matrix of logistic regression predictions
output$model - nnet object describing logistic regression model (if model_out=TRUE)
must be a data.frame object. Cannot contain NA values.
is a character object with names of columns of dataRaw to be treated as channel's input.
is a character vector with names of columns of dataRaw to be treated as channel's output
(optional) is a character vector that indicates side variables' columns of data, if NULL no side variables are included
(optional) is a character object that includes a formula syntax to use in logistic regression model. If NULL, a standard additive model of response variables is assumed. Only for advanced users.
is the logical indicating if the calculated logistic regression model should be included in output list
is the number of iteration of iterative optimisation of the algorithm to estimate channel capacity. Default is 100.
is a maximum number of iteration of fitting algorithm of logistic regression. Default is 1000.
is a maximum acceptable number of weights in logistic regression algorithm. Default is 5000.
[1] Jetka T, Nienaltowski K, Winarski T, Blonski S, Komorowski M, Information-theoretic analysis of multivariate single-cell signaling responses using SLEMI, PLoS Comput Biol, 15(7): e1007132, 2019, https://doi.org/10.1371/journal.pcbi.1007132.
tempdata=data_example1
outputCLR1=capacity_logreg_algorithm(data=tempdata, signal="signal",
response="response",cc_maxit=3,model_out=FALSE,
formula_string = "signal~response")
Run the code above in your browser using DataLab