Relief-based feature selection algorithms
This package includes a scikit-learn-compatible Python implementation of ReBATE, a suite of Relief-based feature selection algorithms for Machine Learning. These Relief-Based algorithms (RBAs) are designed for feature weighting/selection as part of a machine learning pipeline (supervised learning). Presently this includes the following core RBAs: ReliefF, SURF, SURF*, MultiSURF*, and MultiSURF. Additionally, an implementation of the iterative TuRF mechanism and VLSRelief is included.
$
pkg install py311-skrebateOrigin
science/py-skrebate
Size
259KiB
License
MIT
Maintainer
sunpoet@FreeBSD.org
Dependencies
4 packages
Required by
0 packages