Source code for Orange.projection.lda

import sklearn.discriminant_analysis as skl_da

from Orange.projection import SklProjector, DomainProjection

__all__ = ["LDA"]


class LDAModel(DomainProjection):
    var_prefix = "LD"


[docs] class LDA(SklProjector): __wraps__ = skl_da.LinearDiscriminantAnalysis name = "LDA" supports_sparse = False def __init__(self, solver="svd", shrinkage=None, priors=None, n_components=None, store_covariance=False, tol=1e-4, preprocessors=None): super().__init__(preprocessors=preprocessors) self.params = vars() def fit(self, X, Y=None): params = self.params.copy() if params["n_components"] is not None: params["n_components"] = min(min(X.shape), params["n_components"]) proj = self.__wraps__(**params) proj = proj.fit(X, Y) proj.components_ = proj.scalings_.T[:params["n_components"]] return LDAModel(proj, self.domain, len(proj.components_))