I have a large CSV file with three columns of Reddit data, a subreddit name, a second subreddit name, and the number of unique commenters who have posted to both subreddits within the past month.

The CSV file contains the subreddit relationships going both ways, for instance, the following two lines exist in the CSV:

```
Roadcam,Nootropics,39
Nootropics,Roadcam,39
```

In total there are 35778434 lines in the CSV file.

I'm looking to import the CSV file into R and store it as a sparse matrix for analysis. This is how I am attempting to do this:

```
subreddit.overlaps <- read.csv("subreddit_overlaps_2017_01.csv")
subreddit.overlaps.matrix <- sparseMatrix(i = as.numeric(subreddit.overlaps[, 1]),
j = as.numeric(subreddit.overlaps[, 2]),
x = subreddit.overlaps[, 3])
```

However, the issue I'm having is that the dimensions of the produced sparse matrix are not what I would expect. The created sparse matrix appears to only have 4561 rows and 68825 columns. I would have expected the dimensions to be a perfect square, but that doesn't appear to be the case. Why would teh created sparse matrix not be a perfect square?

`sparseMatrix`

is telling you there are 68825 distinct values in the second column (that you map to`j`

), and only 4561 distinct values in the first column (that you map to`i`

). What do`nlevels(subreddit.overlaps[, 1])`

and`nlevels(subreddit.overlaps[, 2])`

give? – Gregor Dec 6 '17 at 22:06closeto plausible for 5982 subreddits. The exact number of rows for`n`

subreddits should be`n^2 - n`

, which is 35778342 for 5982 subreddits, off by 2. – Gregor Dec 6 '17 at 22:27