""" The :mod:`sklearn.decomposition` module includes matrix decomposition algorithms, including among others PCA, NMF or ICA. Most of the algorithms of this module can be regarded as dimensionality reduction techniques. """ from .nmf import NMF, non_negative_factorization from .pca import PCA, RandomizedPCA from .incremental_pca import IncrementalPCA from .kernel_pca import KernelPCA from .sparse_pca import SparsePCA, MiniBatchSparsePCA from .truncated_svd import TruncatedSVD from .fastica_ import FastICA, fastica from .dict_learning import (dict_learning, dict_learning_online, sparse_encode, DictionaryLearning, MiniBatchDictionaryLearning, SparseCoder) from .factor_analysis import FactorAnalysis from ..utils.extmath import randomized_svd from .online_lda import LatentDirichletAllocation __all__ = ['DictionaryLearning', 'FastICA', 'IncrementalPCA', 'KernelPCA', 'MiniBatchDictionaryLearning', 'MiniBatchSparsePCA', 'NMF', 'PCA', 'RandomizedPCA', 'SparseCoder', 'SparsePCA', 'dict_learning', 'dict_learning_online', 'fastica', 'non_negative_factorization', 'randomized_svd', 'sparse_encode', 'FactorAnalysis', 'TruncatedSVD', 'LatentDirichletAllocation']