I discovered the excellent package "stringdist" and now want to use it to compute string distances. In particular I have a set of words, and I want to print out near-matches, where "near match" is through some algorithm like the Levenshtein distance.

I have extremely slow working code in a shell script, and I was able to load in stringdist and produce a matrix with metrics. Now I want to boil down that matrix into a smaller matrix that only has the near matches, e.g. where the metric is non-zero but less that some threshold.

kp <-  c('leaflet','leafletr','lego','levenshtein-distance','logo')
kpm <- stringdistmatrix(kp,useNames="strings",method="lv")
> kpm
                     leaflet leafletr lego levenshtein-distance
leafletr                   1                                   
lego                       5        6                          
levenshtein-distance      16       16   18                     
logo                       6        7    1                   19
m = as.matrix(kpm)
close = apply(m, 1, function(x) x>0 & x<5)
>  close
                     leaflet leafletr  lego levenshtein-distance  logo
 leaflet                FALSE     TRUE FALSE                FALSE FALSE
 leafletr                TRUE    FALSE FALSE                FALSE FALSE
 lego                   FALSE    FALSE FALSE                FALSE  TRUE
 levenshtein-distance   FALSE    FALSE FALSE                FALSE FALSE
 logo                   FALSE    FALSE  TRUE                FALSE FALSE

OK, now I have a (big) dist, how do I reduce it back to a list where the output would be something like


for cases only where the metric is non-zero and less than n=5? I found "apply()" which lets me do the test, now I need to sort out how to use it.

The problem is not specific to stringdist and stringdistmatrix and is very elementary R, but still I'm stuck. I suspect the answer involves subset(), but I don't know how to transform a "dist" into something else.

  • It would be helpful if you could show us kpm or "your big matrix" so we know what you're working with. Alternatively, you could make your problem reproducible, by supplying some dummy data or real data dput(head(read.table("..."),20)) and including it in the question. Jul 18, 2015 at 2:39
  • Thanks Brandon, will do, I'll cut down to a 5x5 matrix and include all the code. Was working from a 100-sized original.
    – vielmetti
    Jul 18, 2015 at 3:02

2 Answers 2


You can do this:

d <- unique(melt(m))
out <- subset(d, value > 0 & value < 5)

Here, melt brings m into long form (2 columns with string names and one column with the value). However, since we've melted a symmetric matrix, we use unique for de-duplication.

Another way is to use dplyr (since all the cool kids are using dplyr with pipes now):


out <- melt(m) %>% distinct() %>% filter(value > 0 & value < 5)

This second option is probably faster but I have not really timed it.

  • 1
    Oh, and if you do melt(m, as.is=TRUE) the labels of m do not get converted to factors.
    – user4117783
    Jul 18, 2015 at 6:22
  • It was melt() that I didn't have in my toolbox, thanks, this is good.
    – vielmetti
    Jul 18, 2015 at 7:06

Set up your data:

kp <-  c('leaflet','leafletr','lego','levenshtein-distance','logo')
kpm <- stringdistmatrix(kp,useNames="strings",method="lv")

Here's where we can change kpm into a dataframe:

kpm <- data.frame(as.matrix(kpm))

This is a way to get a dataframe that has a '1' to mark where words are close enough:

idx <- apply(kpm, 2, function(x) x >0 & x<5)
idx <- apply(idx, 1:2, function(x) if(isTRUE(x)) x<-1 else x<-NA)
#> idx
#                     leaflet leafletr lego levenshtein.distance logo
#  leaflet                   NA        1   NA                   NA   NA
#  leafletr                   1       NA   NA                   NA   NA
#  lego                      NA       NA   NA                   NA    1
#  levenshtein-distance      NA       NA   NA                   NA   NA
#  logo                      NA       NA    1                   NA   NA

To make things easy, melt the dataframe, filter it and get rid of the last column:

final <- melt(idx) %>%
        filter(value==1) %>%
        select(Var1, Var2)

Don't forget to turn everything back into characters, not factors! (It's like a broken record in R sometimes...)

final[] <- lapply(final, as.character)
#> final
#      Var1     Var2
#  leafletr  leaflet
#   leaflet leafletr
#      logo     lego
#      lego     logo

Now we get rid of the duplicates:

final <- final[!duplicated(data.frame(list(do.call(pmin,final),do.call(pmax,final)))),]

Tack on some good names and you are good to go.

names(final) <- c('string 1', 'string 2')
#> final
# string 1 string 2
# leafletr  leaflet
#     logo     lego

(Although you requested a list, this is a dataframe. From here it's pretty easy to convert into whatever you want depending on your need, eg, write to a csv, etc etc.)

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