An R package implementing the UMAP dimensionality reduction method.
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Updated
May 18, 2024 - R
An R package implementing the UMAP dimensionality reduction method.
Uniform Manifold Approximation and Projection - R package
Mathematical & Statistical topics to perform statistical analysis and tests; Linear Regression, Probability Theory, Monte Carlo Simulation, Statistical Sampling, Bootstrapping, Dimensionality reduction techniques (PCA, FA, CCA), Imputation techniques, Statistical Tests (Kolmogorov Smirnov), Robust Estimators (FastMCD) and more in Python and R.
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