Which evaluation metric is commonly used to assess the quality of clustering results?F1 ScoreSilhouette CoefficientAccuracyPrecision
Question
Which evaluation metric is commonly used to assess the quality of clustering results?F1 ScoreSilhouette CoefficientAccuracyPrecision
Solution
The Silhouette Coefficient is commonly used to assess the quality of clustering results. This metric measures how close each point in one cluster is to the points in the neighboring clusters. It's a way to quantify how well a data point fits into its assigned cluster, so it's a good choice for evaluating clustering algorithms.
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