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edge (version 2.4.2)

commonCondLogLikDerDelta: Conditional Log-Likelihoods in Terms of Delta

Description

Common conditional log-likelihood parameterized in terms of delta (phi / (phi+1))

Usage

commonCondLogLikDerDelta(y, delta, der = 0)

Arguments

y
list with elements comprising the matrices of count data (or pseudocounts) for the different groups
delta
delta (phi / (phi+1)) parameter of negative binomial
der
derivative, either 0 (the function), 1 (first derivative) or 2 (second derivative)

Value

  • numeric scalar of function/derivative evaluated at given delta

Details

The common conditional log-likelihood is constructed by summing over all of the individual genewise conditional log-likelihoods. The common conditional log-likelihood is taken as a function of the dispersion parameter (phi), and here parameterized in terms of delta (phi / (phi+1)). The value of delta that maximizes the common conditional log-likelihood is converted back to the phi scale, and this value is the estimate of the common dispersion parameter used by all genes.

See Also

estimateCommonDisp is the user-level function for estimating the common dispersion parameter.

Examples

Run this code
counts<-matrix(rnbinom(20,size=1,mu=10),nrow=5)
d<-DGEList(counts=counts,group=rep(1:2,each=2),lib.size=rep(c(1000:1001),2))
y<-splitIntoGroups(d)
ll1<-commonCondLogLikDerDelta(y,delta=0.5,der=0)
ll2<-commonCondLogLikDerDelta(y,delta=0.5,der=1)

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