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evaluation.md

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Evaluation

This module provides evaluation methods for classification, regression and clustering. Available metrics include:

  1. AUC: Compute AUC for binary classification.
  2. KS: Compute Kolmogorov-Smirnov for binary classification.
  3. LIFT: Compute lift of binary classification.
  4. PRECISION: Compute the precision for binary and multi-classification
  5. RECALL: Compute the recall for binary and multi-classification
  6. ACCURACY: Compute the accuracy for binary and multi-classification
  7. EXPLAINED_VARIANCE: Compute explain variance for regression tasks
  8. MEAN_ABSOLUTE_ERROR: Compute mean absolute error for regression tasks
  9. MEAN_SQUARED_ERROR: Compute mean square error for regression tasks
  10. MEAN_SQUARED_LOG_ERROR: Compute mean squared logarithmic error for regression tasks
  11. MEDIAN_ABSOLUTE_ERROR: Compute median absolute error for regression tasks
  12. R2_SCORE: Compute R^2 (coefficient of determination) score for regression tasks
  13. ROOT_MEAN_SQUARED_ERROR: Compute the root of mean square error for regression tasks
  14. JACCARD_SIMILARITY_SCORE:Compute Jaccard similarity score for clustering tasks (labels are needed)
  15. ADJUSTED_RAND_SCORE:Compute adjusted rand score for clustering tasks (labels are needed)
  16. FOWLKES_MALLOWS_SCORE:Compute Fowlkes Mallows score for clustering tasks (labels are needed)
  17. DAVIES_BOULDIN_INDEX:Compute Davies Bouldin index for clustering tasks
  18. DISTANCE_MEASURE:Compute cluster information in clustering algorithms
  19. CONTINGENCY_MATRIX:Compute contingency matrix for clustering tasks (labels are needed)
  20. PSI: Compute Population Stability Index.
  21. F1-Score: Compute F1-Score for binary tasks.