Some material from my book Statistical Optimization for AI and Machine Learning, available here. In particular:
- My gradient descent technique implemented in
gradient.py
, available in this folder. - The
interpol.py
,interpol_fourier.py
andinterpol_ortho.py
programs in this folder are described in my article New Interpolation Methods for Data Synthetization and Prediction, available here. - For feature clustering, see
featureClustering.py
andfeatureClusteringScipy.py
(the latter with hierarchical clustering) in this folder. - Fast grid search for faster hyperparameter tuning: see
ZetaGeom.py
in this folder. The article describing and documenting the method is available here. - Stochastic thinning: new technique to boost learning algorithms. See
thinning_neuralNets.py
, andthinning_regression.py
in this folder. The article describing and documenting the method is available here. - Extrapolated quantiles (quantile convolution) to debias GenAI methods. See
equantile.py
. The article describing and documenting the method is available here. - Material about Generative Adversarial Networks (GAN), NoGAN and NoGAN2, is in the main folder. The corresponding Python libraries are described in the book.