Dimensionality Reduction
Reduce vector dimensions while preserving important information using PCA and whitening.
PCA (Principal Component Analysis)
Reduce dimensions while preserving variance:
-- PCA transformation SELECT pca_transform( 'data_table', 'features', 128, -- target dimensions 'pca_model' ); -- Apply PCA to new data SELECT pca_apply(features, 'pca_model') AS reduced_features FROM test_table;
PCA Whitening
Standardize variance across components:
-- PCA with whitening SELECT pca_whiten( 'data_table', 'features', 128, 'pca_whitened_model' );
Benefits
- Reduce storage requirements
- Speed up training and inference
- Remove noise and redundant information
- Visualize high-dimensional data
Learn More
For detailed documentation on PCA, whitening, choosing dimensions, and inverse transformation, visit:
Dimensionality Reduction Documentation
Related Topics
- Clustering - Apply clustering after reduction
- Quality Metrics - Evaluate reduction quality