# R: producing a list of near matches with stringdist and stringdistmatrix

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

``````leafletr,leaflet,1
logo,lego,1
``````

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. Jul 18, 2015 at 3:02

You can do this:

``````library(reshape2)
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):

``````library(dlpyr)
library(reshape2)
library(magrittr)

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

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

• 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. Jul 18, 2015 at 7:06

``````library('stringdist')
library('dplyr')
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.)