I'm new to R and am trying to replace the loop in the appended block of code with something more efficient. For context, this is a simple, synthetic example of a k-nearest neighbor regression with a multivariate (3-dimensional) target.
rm(list=ls()) set.seed(1) # Fast nearest neighbor package library(FNN) k <- 3 # Synthetic 5d predictor and noisy 3d target data x <- matrix(rnorm(50), ncol=5) y <- 5*x[,1:3] + matrix(rnorm(30), ncol=3) print(x) print(y) # New synthetic 5d predictor data (4 cases) x.new <- matrix(rnorm(20), ncol=5) print(x.new) # Identify k-nearest neighbors nn <- knnx.index(data=x, query=x.new, k=k) print(nn)
At present, I am taking the unweighted average of the k-nearest neighbours (nn) by the following loop:
# Unweighted k-nearest neighbor regression predictions based on y and nn y.new <- matrix(0, ncol=ncol(y), nrow=nrow(x.new)) for(i in 1:nrow(nn)) y.new[i,] <- colMeans(y[nn[i,],,drop=FALSE]) print(y.new)
but there must be a simple way to avoid looping here. Thanks.