Gaussian Mixture Model (GMM) on Wine Quality

See Gaussian Mixture Model (GMM) applied to the Wine Quality dataset (178 samples, 13 features). Interactive visualization, metrics, and analysis.

How Gaussian Mixture Model (GMM) Works

Gaussian Mixture Models fit a probabilistic model of K multivariate Gaussians, providing soft cluster assignments and uncertainty estimates.

GMMGaussian Mixtureprobabilistic clusteringEM algorithmBICAICsoft clustering

About the Wine Quality Dataset

178 wine samples with 13 chemical properties. Ideal for discovering natural groupings or predicting wine class.

Samples
178
Features
13
Type
Numeric
Category
Probabilistic

Key Metrics to Watch

Silhouette Score

Measures how similar a point is to its own cluster vs. other clusters. Ranges from −1 to +1; higher is better.

Calinski-Harabasz Index

Ratio of between-cluster to within-cluster variance. Higher values indicate denser, well-separated clusters.

Davies-Bouldin Index

Average similarity between each cluster and its most similar cluster. Lower is better.

Inertia (Within-Cluster SSE)

Sum of squared distances from each point to its assigned centroid. Lower indicates tighter clusters.

When to Use Gaussian Mixture Model (GMM)

Gaussian Mixture Model (GMM) belongs to the Probabilistic family of clustering algorithms. These methods model each cluster as a probability distribution, providing soft assignments and uncertainty estimates.

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