solve.Ridge: Run the Ridge Regression Solver

Description Usage Arguments Value See Also Examples

Description

Given a TReNA object with Ridge Regression as the solver, use the glmnet function to estimate coefficients for each transcription factor as a predictor of the target gene's expression level. This method should be called using the solve method on an appropriate TReNA object.

Usage

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## S4 method for signature 'RidgeSolver'
run(obj, target.gene, tfs, tf.weights = rep(1,
  length(tfs)), extraArgs = list())

Arguments

obj

An object of class Solver with "ridge" as the solver string

target.gene

A designated target gene that should be part of the mtx.assay data

tfs

The designated set of transcription factors that could be associated with the target gene.

tf.weights

A set of weights on the transcription factors (default = rep(1, length(tfs)))

extraArgs

Modifiers to the Ridge Regression solver

Value

A data frame containing the coefficients relating the target gene to each transcription factor, plus other fit parameters.

See Also

glmnet, , RidgeSolver

Other solver methods: run,BayesSpikeSolver-method, run,EnsembleSolver-method, run,LassoPVSolver-method, run,LassoSolver-method, run,PearsonSolver-method, run,RandomForestSolver-method, run,SpearmanSolver-method, run,SqrtLassoSolver-method, solve,TReNA-method

Examples

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# Load included Alzheimer's data, create a TReNA object with Bayes Spike as solver, and solve
load(system.file(package="TReNA", "extdata/ampAD.154genes.mef2cTFs.278samples.RData"))
trena <- TReNA(mtx.assay = mtx.sub, solver = "ridge")
target.gene <- "MEF2C"
tfs <- setdiff(rownames(mtx.sub), target.gene)
tbl <- solve(trena, target.gene, tfs)

TReNA documentation built on Nov. 17, 2017, 12:35 p.m.