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!