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Form row and column sums and means for
objects, for sparseMatrix
the result may
optionally be sparse (sparseVector
), too.
Row or column names are kept respectively as for base matrices
and colSums
methods, when the result is
numeric
vector.
colSums(x, na.rm = FALSE, dims = 1L, ...)
rowSums(x, na.rm = FALSE, dims = 1L, ...)
colMeans(x, na.rm = FALSE, dims = 1L, ...)
rowMeans(x, na.rm = FALSE, dims = 1L, ...)# S4 method for CsparseMatrix
colSums (x, na.rm = FALSE, dims = 1L,
sparseResult = FALSE, ...)
# S4 method for CsparseMatrix
rowSums (x, na.rm = FALSE, dims = 1L,
sparseResult = FALSE, ...)
# S4 method for CsparseMatrix
colMeans(x, na.rm = FALSE, dims = 1L,
sparseResult = FALSE, ...)
# S4 method for CsparseMatrix
rowMeans(x, na.rm = FALSE, dims = 1L,
sparseResult = FALSE, ...)
returns a numeric vector if sparseResult
is FALSE
as per
default. Otherwise, returns a sparseVector
.
dimnames(x)
are only kept (as names(v)
)
when the resulting v
is numeric
, since
sparseVector
s do not have names.
a Matrix, i.e., inheriting from Matrix
.
logical. Should missing values (including NaN
)
be omitted from the calculations?
completely ignored by the Matrix
methods.
potentially further arguments, for method <->
generic compatibility.
logical indicating if the result should be sparse,
i.e., inheriting from class sparseVector
. Only
applicable when x
is inheriting from a
sparseMatrix
class.
colSums
and the
sparseVector
classes.
(M <- bdiag(Diagonal(2), matrix(1:3, 3,4), diag(3:2))) # 7 x 8
colSums(M)
d <- Diagonal(10, c(0,0,10,0,2,rep(0,5)))
MM <- kronecker(d, M)
dim(MM) # 70 80
length(MM@x) # 160, but many are '0' ; drop those:
MM <- drop0(MM)
length(MM@x) # 32
cm <- colSums(MM)
(scm <- colSums(MM, sparseResult = TRUE))
stopifnot(is(scm, "sparseVector"),
identical(cm, as.numeric(scm)))
rowSums (MM, sparseResult = TRUE) # 14 of 70 are not zero
colMeans(MM, sparseResult = TRUE) # 16 of 80 are not zero
## Since we have no 'NA's, these two are equivalent :
stopifnot(identical(rowMeans(MM, sparseResult = TRUE),
rowMeans(MM, sparseResult = TRUE, na.rm = TRUE)),
rowMeans(Diagonal(16)) == 1/16,
colSums(Diagonal(7)) == 1)
## dimnames(x) --> names( ) :
dimnames(M) <- list(paste0("r", 1:7), paste0("V",1:8))
M
colSums(M)
rowMeans(M)
## Assertions :
stopifnot(exprs = {
all.equal(colSums(M),
structure(c(1,1,6,6,6,6,3,2), names = colnames(M)))
all.equal(rowMeans(M),
structure(c(1,1,4,8,12,3,2)/8, names = paste0("r", 1:7)))
})
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