I've got 75,000 coordinates that are analogous to the following example data:

addresses <- structure(list(address_lat = c(-175.33, -175.20, -177.65, -174.10, -175.80, 
-179.50, -179.23, -179.12, -178.75, -174.77), address_lon = c(70.25, 
69.75, 62.23, 60.50, 66.25, 61.75, 62.54, 63.70, 61.45, -15.80)), .Names = c("address_lat", "address_lon"), class = "data.frame", row.names = c(NA, -10L))

and I need to do fuzzy matching on the GeoNames data (from here, e.g. "US.zip").

This gives me about 500,000 rows of data. I want to match my coordinates against those in the GeoNames data, which as far as I know means using a distance matrix, returning the closest rows of data from the "US" file for each of my 75,000 lat/lon pairs.

I have to do this offline because there are too many rows to run it against a web service.

Theoretically, I know how to do this:

US <- as.data.frame(fread("US.txt")) # data.table or data.frame, either way
D = distm(US[, c(6,5)], addresses)
geo <- cbind(addresses, US[apply(D, 1, which.min),])

The only problem is that it would take like a Terabyte of RAM or more to run this. So I get the

cannot allocate vector of size XXXX


Is there a practical way to do this? I tried chunking it but even a few hundred rows at a time is too much.

  • @Arun I'm just matching latitude and longitude against the GeoNames geographical data. I have no domain expertise with geographic data either. I'm just getting geo/location data from this popular data source. geonames.org So basically given a lat/lon I mainly just want to know the city, so that I have better features for my statistical models. – Hack-R Jul 13 '16 at 19:01
  • okay, thanks. I'll try to understand the solution from Bryan. – Arun Jul 13 '16 at 23:17
up vote 2 down vote accepted

I am not sure if I understand your question correctly, but see if this helps:

US <- as.data.frame(fread("US.txt")) # data.table or data.frame, either way
US<-data.table(US[,c(2,6,5)]) ##just makes it easier for demonstration. 
colnames(US)<-c("city", "lat", "long")

setkey(US, lat, long)

fuzzyMatch<-function(data, fuzzSize = 10, n.results = 3){
 for(i in 1:nrow(data)){

  temp<-US[ lat %between% c(myLat-f, myLat+f)][long %between% c(myLong-f, myLong+f)]
  cities[i]<-unique(temp[sample(nrow(temp), n.results, replace = T),1, with = F])

Variable fuzzSize will be the size of the grid square you use to search, and n.results is how many of the nearby cities it returns. I added this because sometimes it would return 500 and sometimes it returns 0. You may need to fine tune/adjust the output to meet your needs, but hopefully that helps.

EDIT: You could also remove the n.results and then just use the selected cities nearby to use the dist approach you tried before. The smaller subsets should be more memory-feasible.

Your Answer


By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.