
"lm"
and "glm"
.
effects(object, ...)
"effects"(object, set.sign = FALSE, ...)
lm
.TRUE
, the sign of the effects
corresponding to coefficients in the model will be set to agree with the
signs of the corresponding coefficients, otherwise the sign is
arbitrary.residuals
, or a matrix if there were multiple responses
in the fitted model, in either case of class "coef"
.The first $r$ rows are labelled by the corresponding coefficients,
and the remaining rows are unlabelled. Note that in rank-deficient
models the corresponding coefficients will be in a different
order if pivoting occurred.
lm
or aov
,
the effects are the uncorrelated single-degree-of-freedom values
obtained by projecting the data onto the successive orthogonal
subspaces generated by the QR decomposition during the fitting
process. The first $r$ (the rank of the model) are associated with
coefficients and the remainder span the space of residuals (but are
not associated with particular residuals).Empty models do not have effects.
coef
y <- c(1:3, 7, 5)
x <- c(1:3, 6:7)
( ee <- effects(lm(y ~ x)) )
c( round(ee - effects(lm(y+10 ~ I(x-3.8))), 3) )
# just the first is different
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