I'm constructing an adjacency matrix to use with the
bipartite package. Each row and column represents an entity of two different classes, and
m[i,j] represents an interaction between entity
i of the first class and
j of the second. I currently have a data frame
df of the form
s1 s2 weight 1 261 446 1 2 188 259 4 3 144 1119 1
where, for example, row 2 represents an interaction between member 188 of
s1 and 259 of
s2 of weight 4. So
m[259,188] should be 4. However, since not every value between 1 and
max(df$s1, df$s2) will be represented, using the normal indexes won't work. If it were possible, I'd want something like this:
[,144] [,188] [,261] [259,] 0 4 0 [446,] 0 0 1 [1119,] 1 0 0
I know I can rename columns and rows to a character vector, but I think it would be inefficient/unwieldy to set it to
as.character(unique(df$s1)) (and similarly for
s2) and index it that way. I also considered keeping a vector of the unique elements of
s2 and using e.g.
m[which(unique.s2 == i), which(unique.s1 == j)], but again, that seems like a suboptimal solution. Since not every number between min(s1) and max(s1) will be in the matrix, I can't just make the dimensions c(max(s1), max(s2)) and use the indexes directly.
Is there a better way to accomplish my goal?