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Here is an example of a problem I am attempting to solve and implements in a much larger database:

I have a sparse grid of points across the new world, with lat and long defined as below.

LAT<-rep(-5:5*10, 5)
LON<-rep(seq(-140, -60, by=20), each=11)

I know the color of some points on my grid


What I want to do is replace the NA values in COLOR with the color that is closeset (in distance) to that point. In the actual implementation, I am not worried too much with ties, but I suppose it is possible (I could probably fix those by hand).


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I reckon if you split the data frame into those with colours and those without you could feed it into FNN::get.knnx(colours,blanks) and use the fast nearest neighbour code... Hmmm... – Spacedman Aug 20 '12 at 16:52
up vote 6 down vote accepted


First, make your data frame with data.frame or things all get coerced to characters:


Split the data frame up - you could probably do this in one go but this makes things a bit more obvious:

query = data[$COLOR),]
colours = data[!$COLOR),]
neighs = get.knnx(colours[,c("LAT","LON")],query[,c("LAT","LON")],k=1)

Now insert the replacement colours directly into the data dataframe:


Note however that distance is being computed using pythagoras geometry on lat-long, which isn't true because the earth isn't flat. You might have to transform your coordinates to something else first.

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This is great. Thank you. I will try it out. I thought of that last issue, but its not a large issue for the actual dataset - distances are quite close (I am finding the nearest country to points just off the coast of that country) – user1612278 Aug 20 '12 at 17:09
+1 for knnx() – Andrie Aug 20 '12 at 17:28

I came up with this solution, but Spacedman's seems much better. Note that I also assume the Earth is flat here :)

# First coerce to numeric from factor:
data$LAT <- as.numeric(as.character(data$LAT))
data$LON <- as.numeric(as.character(data$LON))

n <- nrow(data)

# Compute Euclidean distances:
Dist <- outer(1:n,1:n,function(i,j)sqrt((data$LAT[i]-data$LAT[j])^2 + (data$LON[i]-data$LON[j])^2))

# Dummy second data:
data2 <- data

# Loop over data to fill:
for (i in 1:n)
  if ($COLOR[i]))
    data$COLOR[i] <- data2$COLOR[order(Dist[i,])[!$COLOR[order(Dist[i,])])][1]]
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