sklearn.metrics.davies_bouldin_score¶
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sklearn.metrics.davies_bouldin_score(X, labels)[source]¶ Computes the Davies-Bouldin score.
The score is defined as the ratio of within-cluster distances to between-cluster distances.
Read more in the User Guide.
Parameters: - X : array-like, shape (
n_samples,n_features) List of
n_features-dimensional data points. Each row corresponds to a single data point.- labels : array-like, shape (
n_samples,) Predicted labels for each sample.
Returns: - score: float
The resulting Davies-Bouldin score.
References
[1] Davies, David L.; Bouldin, Donald W. (1979). “A Cluster Separation Measure”. IEEE Transactions on Pattern Analysis and Machine Intelligence. PAMI-1 (2): 224-227 - X : array-like, shape (