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.
na.rm: logical. Should missing values (including NaN) be omitted from the calculations?
dims: completely ignored by the Matrix methods.
...: potentially further arguments, for method <->
generic compatibility.
sparseResult: logical indicating if the result should be sparse, i.e., inheriting from class sparseVector. Only applicable when x is inheriting from a sparseMatrix class.
Returns
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 sparseVectors do not have names.
See Also
colSums and the sparseVector classes.
Examples
(M <- bdiag(Diagonal(2), matrix(1:3,3,4), diag(3:2)))# 7 x 8colSums(M)d <- Diagonal(10, c(0,0,10,0,2,rep(0,5)))MM <- kronecker(d, M)dim(MM)# 70 80length(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 zerocolMeans(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( <value> ) :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)))})