I have a matrix with roughly 500,000 features that I'd like to correlate and find features that have correlations >= 0.90, then cluster these into one group. Is there an efficient algorithm to do this? R's `cor()`

function will not work as this data is too large to compute a 500k x 500k matrix, let alone storing this in memory. I'm only interested in finding these features that satisfy a correlation threshold.

My current implementation looks something like this:

```
cluster_number <- 1
for (b in seq(1, 500000)) {
# INIT
b1 <- to_cluster[b]
if(b == 1){ selected$R_CLUST[selected$BIN %in% b1] <- cluster_number }
# COMPUTE COR
sel <- subset(selected, R_CLUST != 0)
sel <- sel[!duplicated(sel$R_CLUST), ]
sel <- as.vector(sel$BIN)
sel <- sel[! sel %in% b1]
if(length(sel) == 0){ next }
r2 <- round(cor(signal[, c(b1, sel)], method = "pearson", use = "everything"), 5)
diag(r2) <- 0
r2 <- subset(melt(r2), value >= r_cutoff & Var1 == b1)
if(nrow(r2) > 0){
correlate <- r2$Var2
selected$R_CLUST[selected$BIN %in% b1] <- selected$R_CLUST[selected$BIN %in% correlate]
} else {
cluster_number <- cluster_number + 1
selected$R_CLUST[selected$BIN %in% b1] <- cluster_number
}
}
```

Here I am iterating through my features and placing correlated features aside in the `selected`

data.frame if they satisfy a correlation threshold. This does not work though because the `selected`

data.frame gets very large and computing `cor()`

becomes computationally intensive.

Any help would be much appreciated!

EDIT: I should mention that the ultimate goal here is to cluster these features into groups such that the guarantee is that each group satisfies a correlation threshold. I'm also thinking about perhaps taking a nearest-neighbor approach by taking, say, the top 10 closest features to a given feature and create a graph based on this and find largely connected components.