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Leer Challenge: Unsupervised Metrics | Unsupervised Learning Metrics
Evaluation Metrics in Machine Learning

bookChallenge: Unsupervised Metrics

Taak

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You will perform a full unsupervised model evaluation pipeline, consisting of anomaly detection, dimensionality reduction, and clustering.

Perform the following steps:

1. Anomaly Detection Evaluation

  • Use the make_classification dataset from scikit-learn with strong class imbalance (weights=[0.95, 0.05]).
  • Train an IsolationForest model to detect anomalies.
  • Compute:
    • Precision.
    • Recall.
    • ROC–AUC.

2. Dimensionality Reduction Evaluation

  • Apply PCA to the dataset (2 components).
  • Compute:
    • Explained Variance Ratio.
    • Reconstruction Error between original and inverse-transformed data.

3. Clustering Evaluation

  • Apply KMeans with n_clusters=3 on the PCA-reduced data.
  • Compute:
    • Inertia.
    • Silhouette Score.
    • Davies–Bouldin Score.
    • Calinski–Harabasz Score.

Oplossing

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bookChallenge: Unsupervised Metrics

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Taak

Swipe to start coding

You will perform a full unsupervised model evaluation pipeline, consisting of anomaly detection, dimensionality reduction, and clustering.

Perform the following steps:

1. Anomaly Detection Evaluation

  • Use the make_classification dataset from scikit-learn with strong class imbalance (weights=[0.95, 0.05]).
  • Train an IsolationForest model to detect anomalies.
  • Compute:
    • Precision.
    • Recall.
    • ROC–AUC.

2. Dimensionality Reduction Evaluation

  • Apply PCA to the dataset (2 components).
  • Compute:
    • Explained Variance Ratio.
    • Reconstruction Error between original and inverse-transformed data.

3. Clustering Evaluation

  • Apply KMeans with n_clusters=3 on the PCA-reduced data.
  • Compute:
    • Inertia.
    • Silhouette Score.
    • Davies–Bouldin Score.
    • Calinski–Harabasz Score.

Oplossing

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Was alles duidelijk?

Hoe kunnen we het verbeteren?

Bedankt voor je feedback!

Sectie 3. Hoofdstuk 5
single

single

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