I want to get N nearest data points from center (based on Euclidean Distance) in each cluster after deploying K-means algorithm. I am able to get the indices of data points using
np.where(km.labels_ == 0)
You can use the transform
method of the kmeans
class which calculates the distance of each data point to each of the cluster.
Then assuming you want the top N
points from the 0th index cluster
then you can just do:
cluster = 0
N = 2
np.sort(kmeans.transform(X)[:,cluster])[:N]
A simple four step process:
argmin
np.where