I am tasked with creating a distance matrix function based on a custom defined distance measure. The distance measure is as follows:
wabs_dist = function(u, v, w){
return( sum((abs(u-v))*w) )
}
Where u and v are vectors and w is a weight.
The problem I am to solve:
I am to create a distance matrix function create-dm(x,w) that returns a distance matrix for the objects in dataframe x by calling the wabs-dist(a,b,w) for all pairs of objects a and b belonging to x. If x is a data set with 4 attributes then w is a vector e.g w = c(1,1,3,2) assigned to each attribute. Yes there are already standard functions like dist() but I am to create my own here using the wabs_dist.
My solution so far:
create_dm = function(x, w){ #x is a dataframe
distances = matrix(0, nrow = nrow(x), ncol = nrow(x))
for (i in 1:nrow(x)) {
for(j in 1:(i-1)){
distances[i, j] = wabs_dist(x[i,], x[j,], w)
distances[j, i] = distances[i, j]
}
}
return(distances)
}
How do i implement a vector of weights because i wrote this function with the mindset of passing in just one weight but now i have to write it to accept a list. How do i do implement this function using the list of weights?
This function takes A LOT of time to run. In fact it never actually prints out the distance matrix function. I cant figure out why
An example:
Let x be a data frame containing vectors a, b and c where: a: (1, 2) b: (4, 5) c: (9, 12)
w is weight vector: (0.2, 0.3)
wabs-dist(a,b,w) = 1.5 wabs-dist(b,c,w) = 3.1
create-dm(x,w)=
0 1.5 4.6
1.5 0 3.1
4.6 3.1 0
w
might be a constant in which case there are much faster ways to do this. PLEASE give a complete description of the problem.n C 2
number of computations in case of a perfectn X n
matrix.wabs_dist(x[i,], x[j,], w)
you have two single items followed by something you didn't define. It makes little sense to have w be a more than a length-1 vector which I was sloppily referring to as a constant. This question calls out for a simple example where all the objects are defined and the correct answer given.