NorrisWilliams#
- class chemotools.derivative.NorrisWilliams(window_length: int = 5, gap_size: int = 3, deriv: int = 1, mode='nearest', window_size='deprecated', derivative_order='deprecated')[fuente]
Bases:
TransformerMixin,OneToOneFeatureMixin,BaseEstimatorA transformer that calculates the Norris-Williams derivative of the input data.
- Parámetros:
window_length (int, optional, default=5) – The size of the window to use for the derivative calculation. Must be odd. Default is 5.
gap_size (int, optional, default=3) – The size of the gap to use for the derivative calculation. Must be odd. Default is 3.
deriv (int, optional, default=1) – The order of the derivative to calculate. Can be 1 or 2. Default is 1.
mode (str, optional, default="nearest") – The mode to use for the derivative calculation. Can be «nearest», «constant», «reflect», «wrap», «mirror» or «interp». Default is «nearest».
window_size (int, optional) – Deprecated alias for
window_length.derivative_order (int, optional) – Deprecated alias for
deriv.
- Variables:
n_features_in (int) – The number of features in the input data.
Referencias
- [1] Åsmund Rinnan, Frans van den Berg, Søren Balling Engelsen,
«Review of the most common pre-processing techniques for near-infrared spectra,» TrAC Trends in Analytical Chemistry 28 (10) 1201-1222 (2009).
Ejemplos
>>> from chemotools.derivative import NorrisWilliams >>> from chemotools.datasets import load_fermentation_train >>> # Load sample data >>> X, _ = load_fermentation_train() >>> # Instantiate the transformer >>> transformer = NorrisWilliams(window_size=5, gap_size=3) NorrisWilliams() >>> transformer.fit(X) >>> # Calculate Norris-Williams derivative >>> X_corrected = transformer.transform(X)
- fit(X: ndarray, y=None) NorrisWilliams[fuente]
Fit the transformer to the input data.
- Parámetros:
X (np.ndarray of shape (n_samples, n_features)) – The input data to fit the transformer to.
y (None) – Ignored to align with API.
- Devuelve:
self – The fitted transformer.
- Tipo del valor devuelto:
NorrisWilliams
- transform(X: ndarray, y=None)[fuente]
Transform the input data by calculating the Norris-Williams derivative.
- Parámetros:
X (np.ndarray of shape (n_samples, n_features)) – The input data to transform.
y (None) – Ignored to align with API.
- Devuelve:
X_transformed – The transformed data.
- Tipo del valor devuelto:
np.ndarray of shape (n_samples, n_features)