from __future__ import division, print_function, absolute_import import numpy as np from scipy._lib._util import _asarray_validated __all__ = ["logsumexp", "softmax"] def logsumexp(a, axis=None, b=None, keepdims=False, return_sign=False): """Compute the log of the sum of exponentials of input elements. Parameters ---------- a : array_like Input array. axis : None or int or tuple of ints, optional Axis or axes over which the sum is taken. By default `axis` is None, and all elements are summed. .. versionadded:: 0.11.0 keepdims : bool, optional If this is set to True, the axes which are reduced are left in the result as dimensions with size one. With this option, the result will broadcast correctly against the original array. .. versionadded:: 0.15.0 b : array-like, optional Scaling factor for exp(`a`) must be of the same shape as `a` or broadcastable to `a`. These values may be negative in order to implement subtraction. .. versionadded:: 0.12.0 return_sign : bool, optional If this is set to True, the result will be a pair containing sign information; if False, results that are negative will be returned as NaN. Default is False (no sign information). .. versionadded:: 0.16.0 Returns ------- res : ndarray The result, ``np.log(np.sum(np.exp(a)))`` calculated in a numerically more stable way. If `b` is given then ``np.log(np.sum(b*np.exp(a)))`` is returned. sgn : ndarray If return_sign is True, this will be an array of floating-point numbers matching res and +1, 0, or -1 depending on the sign of the result. If False, only one result is returned. See Also -------- numpy.logaddexp, numpy.logaddexp2 Notes ----- NumPy has a logaddexp function which is very similar to `logsumexp`, but only handles two arguments. `logaddexp.reduce` is similar to this function, but may be less stable. Examples -------- >>> from scipy.special import logsumexp >>> a = np.arange(10) >>> np.log(np.sum(np.exp(a))) 9.4586297444267107 >>> logsumexp(a) 9.4586297444267107 With weights >>> a = np.arange(10) >>> b = np.arange(10, 0, -1) >>> logsumexp(a, b=b) 9.9170178533034665 >>> np.log(np.sum(b*np.exp(a))) 9.9170178533034647 Returning a sign flag >>> logsumexp([1,2],b=[1,-1],return_sign=True) (1.5413248546129181, -1.0) Notice that `logsumexp` does not directly support masked arrays. To use it on a masked array, convert the mask into zero weights: >>> a = np.ma.array([np.log(2), 2, np.log(3)], ... mask=[False, True, False]) >>> b = (~a.mask).astype(int) >>> logsumexp(a.data, b=b), np.log(5) 1.6094379124341005, 1.6094379124341005 """ a = _asarray_validated(a, check_finite=False) if b is not None: a, b = np.broadcast_arrays(a, b) if np.any(b == 0): a = a + 0. # promote to at least float a[b == 0] = -np.inf a_max = np.amax(a, axis=axis, keepdims=True) if a_max.ndim > 0: a_max[~np.isfinite(a_max)] = 0 elif not np.isfinite(a_max): a_max = 0 if b is not None: b = np.asarray(b) tmp = b * np.exp(a - a_max) else: tmp = np.exp(a - a_max) # suppress warnings about log of zero with np.errstate(divide='ignore'): s = np.sum(tmp, axis=axis, keepdims=keepdims) if return_sign: sgn = np.sign(s) s *= sgn # /= makes more sense but we need zero -> zero out = np.log(s) if not keepdims: a_max = np.squeeze(a_max, axis=axis) out += a_max if return_sign: return out, sgn else: return out def softmax(x, axis=None): r""" Softmax function The softmax function transforms each element of a collection by computing the exponential of each element divided by the sum of the exponentials of all the elements. That is, if `x` is a one-dimensional numpy array:: softmax(x) = np.exp(x)/sum(np.exp(x)) Parameters ---------- x : array_like Input array. axis : int or tuple of ints, optional Axis to compute values along. Default is None and softmax will be computed over the entire array `x`. Returns ------- s : ndarray An array the same shape as `x`. The result will sum to 1 along the specified axis. Notes ----- The formula for the softmax function :math:`\sigma(x)` for a vector :math:`x = \{x_0, x_1, ..., x_{n-1}\}` is .. math:: \sigma(x)_j = \frac{e^{x_j}}{\sum_k e^{x_k}} The `softmax` function is the gradient of `logsumexp`. .. versionadded:: 1.2.0 Examples -------- >>> from scipy.special import softmax >>> np.set_printoptions(precision=5) >>> x = np.array([[1, 0.5, 0.2, 3], ... [1, -1, 7, 3], ... [2, 12, 13, 3]]) ... Compute the softmax transformation over the entire array. >>> m = softmax(x) >>> m array([[ 4.48309e-06, 2.71913e-06, 2.01438e-06, 3.31258e-05], [ 4.48309e-06, 6.06720e-07, 1.80861e-03, 3.31258e-05], [ 1.21863e-05, 2.68421e-01, 7.29644e-01, 3.31258e-05]]) >>> m.sum() 1.0000000000000002 Compute the softmax transformation along the first axis (i.e. the columns). >>> m = softmax(x, axis=0) >>> m array([[ 2.11942e-01, 1.01300e-05, 2.75394e-06, 3.33333e-01], [ 2.11942e-01, 2.26030e-06, 2.47262e-03, 3.33333e-01], [ 5.76117e-01, 9.99988e-01, 9.97525e-01, 3.33333e-01]]) >>> m.sum(axis=0) array([ 1., 1., 1., 1.]) Compute the softmax transformation along the second axis (i.e. the rows). >>> m = softmax(x, axis=1) >>> m array([[ 1.05877e-01, 6.42177e-02, 4.75736e-02, 7.82332e-01], [ 2.42746e-03, 3.28521e-04, 9.79307e-01, 1.79366e-02], [ 1.22094e-05, 2.68929e-01, 7.31025e-01, 3.31885e-05]]) >>> m.sum(axis=1) array([ 1., 1., 1.]) """ # compute in log space for numerical stability return np.exp(x - logsumexp(x, axis=axis, keepdims=True))