public class KMeansSummary extends ClusteringSummary
param: predictions DataFrame produced by KMeansModel.transform().
param: predictionCol Name for column of predicted clusters in predictions.
param: featuresCol Name for column of features in predictions.
param: k Number of clusters.
param: numIter Number of iterations.
param: trainingCost K-means cost (sum of squared distances to the nearest centroid for all
points in the training dataset). This is equivalent to sklearn's inertia.
| Modifier and Type | Method and Description |
|---|---|
double |
trainingCost() |
cluster, clusterSizes, featuresCol, k, numIter, predictionCol, predictions