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 }

  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.

closed as too broad by MrFlick, r2evans, Shiladitya, EdChum, phiver Nov 11 at 9:01

Please edit the question to limit it to a specific problem with enough detail to identify an adequate answer. Avoid asking multiple distinct questions at once. See the How to Ask page for help clarifying this question. If this question can be reworded to fit the rules in the help center, please edit the question.

  • 1
    If you need recommendations for clustering techniques, you should ask your question at Cross Validated or Data Science. This really isn't a specific programming question that's appropriate for Stack Overflow. – MrFlick Nov 8 at 20:41
  • I'm looking for ways to speed up the code posted. Perhaps this is more of an optimization question? – user2117258 Nov 8 at 20:42
  • 1
    if you need help improving running code, then that belongs on Code Review. Or at the very list provide a reproducible example with sample input that can be used to timing and evaluation and state what exactly your speed requirements are. – MrFlick Nov 8 at 20:43