from ..base import BaseEstimator, TransformerMixin from ..utils import check_array def _identity(X): """The identity function. """ return X class FunctionTransformer(BaseEstimator, TransformerMixin): """Constructs a transformer from an arbitrary callable. A FunctionTransformer forwards its X (and optionally y) arguments to a user-defined function or function object and returns the result of this function. This is useful for stateless transformations such as taking the log of frequencies, doing custom scaling, etc. A FunctionTransformer will not do any checks on its function's output. Note: If a lambda is used as the function, then the resulting transformer will not be pickleable. .. versionadded:: 0.17 Read more in the :ref:`User Guide `. Parameters ---------- func : callable, optional default=None The callable to use for the transformation. This will be passed the same arguments as transform, with args and kwargs forwarded. If func is None, then func will be the identity function. inverse_func : callable, optional default=None The callable to use for the inverse transformation. This will be passed the same arguments as inverse transform, with args and kwargs forwarded. If inverse_func is None, then inverse_func will be the identity function. validate : bool, optional default=True Indicate that the input X array should be checked before calling func. If validate is false, there will be no input validation. If it is true, then X will be converted to a 2-dimensional NumPy array or sparse matrix. If this conversion is not possible or X contains NaN or infinity, an exception is raised. accept_sparse : boolean, optional Indicate that func accepts a sparse matrix as input. If validate is False, this has no effect. Otherwise, if accept_sparse is false, sparse matrix inputs will cause an exception to be raised. pass_y: bool, optional default=False Indicate that transform should forward the y argument to the inner callable. kw_args : dict, optional Dictionary of additional keyword arguments to pass to func. inv_kw_args : dict, optional Dictionary of additional keyword arguments to pass to inverse_func. """ def __init__(self, func=None, inverse_func=None, validate=True, accept_sparse=False, pass_y=False, kw_args=None, inv_kw_args=None): self.func = func self.inverse_func = inverse_func self.validate = validate self.accept_sparse = accept_sparse self.pass_y = pass_y self.kw_args = kw_args self.inv_kw_args = inv_kw_args def fit(self, X, y=None): if self.validate: check_array(X, self.accept_sparse) return self def transform(self, X, y=None): return self._transform(X, y, self.func, self.kw_args) def inverse_transform(self, X, y=None): return self._transform(X, y, self.inverse_func, self.inv_kw_args) def _transform(self, X, y=None, func=None, kw_args=None): if self.validate: X = check_array(X, self.accept_sparse) if func is None: func = _identity return func(X, *((y,) if self.pass_y else ()), **(kw_args if kw_args else {}))