I'm trying to do a clustering with K-means method but I would like to measure the performance of my clustering. I'm not an expert but I am eager to learn more about clustering.
Here is my code :
import pandas as pd from sklearn import datasets #loading the dataset iris = datasets.load_iris() df = pd.DataFrame(iris.data) #K-Means from sklearn import cluster k_means = cluster.KMeans(n_clusters=3) k_means.fit(df) #K-means training y_pred = k_means.predict(df) #We store the K-means results in a dataframe pred = pd.DataFrame(y_pred) pred.columns = ['Species'] #we merge this dataframe with df prediction = pd.concat([df,pred], axis = 1) #We store the clusters clus0 = prediction.loc[prediction.Species == 0] clus1 = prediction.loc[prediction.Species == 1] clus2 = prediction.loc[prediction.Species == 2] k_list = [clus0.values, clus1.values,clus2.values]
Now that I have my KMeans and my three clusters stored, I'm trying to use the Dunn Index to measure the performance of my clustering (we seek the greater index) For that purpose I import the jqm_cvi package (available here)
from jqmcvi import base base.dunn(k_list)
My question is : does any clustering internal evaluation already exists in Scikit Learn (except from silhouette_score) ? Or in another well known library ?
Thank you for your time