petal-decomposition provides matrix decomposition algorithms including PCA (principal component analysis) and ICA (independent component analysis).
intel-mkl-static
, intel-mkl-system
, netlib-static
, netlib-system
,
openblas-static
, and openblas-system
to select a BLAS/LAPACK
backend.
See ndarray-linalg's documentation for details.serialization
enables serialization/deserialization using serde.The following example shows how to apply PCA to an array of three samples, and obtain singular values as well as how much variance each component explains.
```rust use ndarray::arr2; use petal_decomposition::Pca;
let x = arr2(&[[0f64, 0f64], [1f64, 1f64], [2f64, 2f64]]); let mut pca = PcaBuilder::new(2).build(); // Keep two dimensions. pca.fit(&x).unwrap();
let s = pca.singularvalues(); // [2f64, 0f64] let v = pca.explainedvarianceratio(); // [1f64, 0f64] let y = pca.transform(&x).unwrap(); // [-2f64.sqrt(), 0f64, 2f64.sqrt()] ```
Copyright 2020-2021 Petabi, Inc.
Licensed under Apache License, Version 2.0 (the "License"); you may not use this crate except in compliance with the License.
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