gen2Z(gen)
gen2genZ(gen)
genZ2freq(genZ)
genZ2S(genZ=NULL, reference="F2", nloc=NULL, max.level=NULL,
max.dom=NULL)
genZ2Z(genZ)
genZ2ZS(genZ, reference="F2", max.level=NULL, max.dom=NULL,
threshold=0)
genZ2X(genZ, reference="F2", max.level=NULL, max.dom=NULL)
checkgenZ(genZ, tol=0.0001)
Z2freq(Z)
partialX(genZ, reference="F2", effect)
Sloc(reference="F2", i=NULL, genZ=NULL)
freqmat2Sgenofreqloc(reference="F2", i=NULL, freqmat=NULL, sinv=TRUE)
freqmat2Sgenofreq(nloc, reference="F2", freqmat=NULL, sinv=TRUE)
1
, 2
, 3
. Missing data are allowed."F2"
, "F1"
,
"Finf"
. "P1"
, "P2"
, "G2A"
, "UWR"
and
"noia"
are possible. Default is "F2"
.".ad"
).reference="G2A"
: A vector of length nloc
containing allele frequencies such that
freqmat[i]=frequency(allele 1)
for locus i
.
For referenc
gen2Z
: Transforms a gen
data set into a Z
matrix that is the data matrix in the regression. The function actually calls sequencially gen2genZ
and genZ2Z
.
gen2genZ
: Transforms a gen
matrix into a genZ
matrix.genZ2freq
: Provides a vector representing the frequency of each genotypic form at each locus. The sum of the frequency is 1 for each locus.
genZ2S
: Provides the S
matrix (see Alvarez-Castro and Carlborg 2007) for a given reference point. Some reference points are genotypic frequency-dependent ("G2A"
and "noia"
), and the genZ
matrix must be provided. For the others, only the number of loci is necessary.
genZ2Z
: Computes the Z
matrix from the genotypic probabilities. See Alvarez-Castro and Carlborg 2007 for more details.
genZ2ZS
: Computes Z
and S
matrices at the same time. This is highly efficient when many genotypes are not represented in the dataset. The function returns a list of two elements "zmat"
and "smat"
.
genZ2X
: Computes the product of Z
and S
matrices without building them. This is very efficient when considering only low-level interactions.
checkgenZ
: Checks the structure of the genZ
matrix.
Z2freq
: Computes the multi-locus genotypic frequency over all genotypic combinations.
partialX
: Computes the product of Z
and S
matrices, keeping Z
and S
as small as possible considering a given effect effect
.
Sloc
: Provides a 3x3 S
matrix, corresponding to one locus. Frequency-dependent reference points will require the genZ
matrix and the index of the locus.
freqmat2Sgenofreqloc
: Returns the 3x3 S
matrix (and inv(S)
if sinv=TRUE
) for given i
, freqmat
and reference
.
freqmat2Sgenofreq
: Returns the 3^nloc x 3^nloc S
matrix (and inv(S)
if sinv=TRUE
) for given freqmat
and reference
.
linearRegression
, multilinearRegression
, linearGPmapanalysis
set.seed(123456789)
map <- c(0.25, -0.75, -0.75, -0.75, 2.25, 2.25, -0.75, 2.25, 2.25)
names(map) <- genNames(2)
pop <- simulatePop(map, N=500, sigmaE=0.2, type="F2")
gen <- pop[2:3]
genZ <- gen2genZ(gen)
Z <- genZ2Z(genZ)
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