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Calculating Euclidean Distances in R is easy. A good example can be found HERE. The vectorised form is:

sqrt((known_data[, 1] - unknown_data[, 1])^2 + (known_data[, 2] - unknown_data[, 2])^2)

What would be the fastest, most efficient way to get Euclidean Distances for each row of one data frame with all rows of another data frame? A particular function from apply() family? Thanks!

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  • I assume that both data frame need to have the same variables? Because otherwise you cannot compute a Euclidean distance? Oct 8, 2020 at 19:45

2 Answers 2

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Maybe you can try outer + dist like below

outer(
  1:nrow(known_data),
  1:nrow(unknown_data),
  FUN = Vectorize(function(x,y) dist(rbind(known_data[x,],unknown_data[y,])))
)
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  • 1
    I was seconds off posting an almost identical answer! Won't bother now... +1 Oct 8, 2020 at 19:47
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I would use the dist() function (which is very efficient) on the combination of the two data frames and then remove the unneeded distances, if you like. Example:

df1 <- iris[1:5, -5]
df2 <- iris[6:10, -5]

all_distances <- dist(rbind(df1, df2))
all_distances <- as.matrix(all_distances)

# remove unneeded distances
all_distances[1:5, 1:5] <- NA
all_distances[6:10, 6:10] <- NA
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  • Great approach for smallish data, but on large data (especially if one data frame is very large) this is a lot of wasted computation. Oct 8, 2020 at 19:55
  • Agree! My data is unfortunately big which is why I have asked about some apply()-like solution.
    – striatum
    Oct 9, 2020 at 8:42
  • Well, I don't think that any other option will provide a solution to the asymptotic computational effort, which is also very high when only computing the distances from the different data frames. If your data is so large, computing any distance matrix will be challenging. Oct 9, 2020 at 9:35

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