8.22.1. sklearn.pls.PLSRegression¶
- class sklearn.pls.PLSRegression(n_components=2, scale=True, algorithm='nipals', max_iter=500, tol=1e-06, copy=True)¶
- PLS regression - PLSRegression inherits from PLS with mode=”A” and deflation_mode=”regression”. Also known PLS2 or PLS in case of one dimensional response. - Parameters : - X : array-like of predictors, shape = [n_samples, p] - Training vectors, where n_samples in the number of samples and p is the number of predictors. - Y : array-like of response, shape = [n_samples, q] - Training vectors, where n_samples in the number of samples and q is the number of response variables. - n_components : int, (default 2) - Number of components to keep. - scale : boolean, (default True) - whether to scale the data - algorithm : string, “nipals” or “svd” - The algorithm used to estimate the weights. It will be called n_components times, i.e. once for each iteration of the outer loop. - max_iter : an integer, (default 500) - the maximum number of iterations of the NIPALS inner loop (used only if algorithm=”nipals”) - tol : non-negative real - Tolerance used in the iterative algorithm default 1e-06. - copy : boolean, default True - Whether the deflation should be done on a copy. Let the default value to True unless you don’t care about side effect - Notes - For each component k, find weights u, v that optimizes: max corr(Xk u, Yk v) * var(Xk u) var(Yk u), such that |u| = |v| = 1 - Note that it maximizes both the correlations between the scores and the intra-block variances. - The residual matrix of X (Xk+1) block is obtained by the deflation on the current X score: x_score. - The residual matrix of Y (Yk+1) block is obtained by deflation on the current X score. This performs the PLS regression known as PLS2. This mode is prediction oriented. - References - Jacob A. Wegelin. A survey of Partial Least Squares (PLS) methods, with emphasis on the two-block case. Technical Report 371, Department of Statistics, University of Washington, Seattle, 2000. - In french but still a reference: Tenenhaus, M. (1998). La regression PLS: theorie et pratique. Paris: Editions Technic. - Examples - >>> from sklearn.pls import PLSCanonical, PLSRegression, CCA >>> X = [[0., 0., 1.], [1.,0.,0.], [2.,2.,2.], [2.,5.,4.]] >>> Y = [[0.1, -0.2], [0.9, 1.1], [6.2, 5.9], [11.9, 12.3]] >>> pls2 = PLSRegression(n_components=2) >>> pls2.fit(X, Y) PLSRegression(algorithm='nipals', copy=True, max_iter=500, n_components=2, scale=True, tol=1e-06) >>> Y_pred = pls2.predict(X) - Attributes - x_weights_ - array, [p, n_components] - X block weights vectors. - y_weights_ - array, [q, n_components] - Y block weights vectors. - x_loadings_ - array, [p, n_components] - X block loadings vectors. - y_loadings_ - array, [q, n_components] - Y block loadings vectors. - x_scores_ - array, [n_samples, n_components] - X scores. - y_scores_ - array, [n_samples, n_components] - Y scores. - x_rotations_ - array, [p, n_components] - X block to latents rotations. - y_rotations_ - array, [q, n_components] - Y block to latents rotations. - coefs: array, [p, q] - The coeficients of the linear model: Y = X coefs + Err - Methods - fit(X, Y) - get_params([deep]) - Get parameters for the estimator - predict(X[, copy]) - Apply the dimension reduction learned on the train data. - set_params(**params) - Set the parameters of the estimator. - transform(X[, Y, copy]) - Apply the dimension reduction learned on the train data. - __init__(n_components=2, scale=True, algorithm='nipals', max_iter=500, tol=1e-06, copy=True)¶
 - get_params(deep=True)¶
- Get parameters for the estimator - Parameters : - deep: boolean, optional : - If True, will return the parameters for this estimator and contained subobjects that are estimators. 
 - predict(X, copy=True)¶
- Apply the dimension reduction learned on the train data. - Parameters : - X : array-like of predictors, shape = [n_samples, p] - Training vectors, where n_samples in the number of samples and p is the number of predictors. - copy : boolean - Whether to copy X and Y, or perform in-place normalization. - Notes - This call require the estimation of a p x q matrix, which may be an issue in high dimensional space. 
 - set_params(**params)¶
- Set the parameters of the estimator. - The method works on simple estimators as well as on nested objects (such as pipelines). The former have parameters of the form <component>__<parameter> so that it’s possible to update each component of a nested object. - Returns : - self : 
 - transform(X, Y=None, copy=True)¶
- Apply the dimension reduction learned on the train data. - Parameters : - X : array-like of predictors, shape = [n_samples, p] - Training vectors, where n_samples in the number of samples and p is the number of predictors. - Y : array-like of response, shape = [n_samples, q], optional - Training vectors, where n_samples in the number of samples and q is the number of response variables. - copy : boolean - Whether to copy X and Y, or perform in-place normalization. - Returns : - x_scores if Y is not given, (x_scores, y_scores) otherwise. : 
 
