Source code for statsmodels.nonparametric.bandwidths
from __future__ import division
import numpy as np
from scipy.stats import scoreatpercentile as sap
from statsmodels.sandbox.nonparametric import kernels
def _select_sigma(X):
    """
    Returns the smaller of std(X, ddof=1) or normalized IQR(X) over axis 0.
    References
    ----------
    Silverman (1986) p.47
    """
#    normalize = norm.ppf(.75) - norm.ppf(.25)
    normalize = 1.349
#    IQR = np.subtract.reduce(percentile(X, [75,25],
#                             axis=axis), axis=axis)/normalize
    IQR = (sap(X, 75) - sap(X, 25))/normalize
    return np.minimum(np.std(X, axis=0, ddof=1), IQR)
## Univariate Rule of Thumb Bandwidths ##
[docs]def bw_scott(x, kernel=None):
    """
    Scott's Rule of Thumb
    Parameters
    ----------
    x : array-like
        Array for which to get the bandwidth
    kernel : CustomKernel object
        Unused
    Returns
    -------
    bw : float
        The estimate of the bandwidth
    Notes
    -----
    Returns 1.059 * A * n ** (-1/5.) where ::
       A = min(std(x, ddof=1), IQR/1.349)
       IQR = np.subtract.reduce(np.percentile(x, [75,25]))
    References
    ----------
    Scott, D.W. (1992) Multivariate Density Estimation: Theory, Practice, and
        Visualization.
    """
    A = _select_sigma(x)
    n = len(x)
    return 1.059 * A * n ** (-0.2) 
[docs]def bw_silverman(x, kernel=None):
    """
    Silverman's Rule of Thumb
    Parameters
    ----------
    x : array-like
        Array for which to get the bandwidth
    kernel : CustomKernel object
        Unused
    Returns
    -------
    bw : float
        The estimate of the bandwidth
    Notes
    -----
    Returns .9 * A * n ** (-1/5.) where ::
       A = min(std(x, ddof=1), IQR/1.349)
       IQR = np.subtract.reduce(np.percentile(x, [75,25]))
    References
    ----------
    Silverman, B.W. (1986) `Density Estimation.`
    """
    A = _select_sigma(x)
    n = len(x)
    return .9 * A * n ** (-0.2) 
def bw_normal_reference(x, kernel=kernels.Gaussian):
    """
    Plug-in bandwidth with kernel specific constant based on normal reference.
    This bandwidth minimizes the mean integrated square error if the true
    distribution is the normal. This choice is an appropriate bandwidth for
    single peaked distributions that are similar to the normal distribution.
    Parameters
    ----------
    x : array-like
        Array for which to get the bandwidth
    kernel : CustomKernel object
        Used to calculate the constant for the plug-in bandwidth.
    Returns
    -------
    bw : float
        The estimate of the bandwidth
    Notes
    -----
    Returns C * A * n ** (-1/5.) where ::
       A = min(std(x, ddof=1), IQR/1.349)
       IQR = np.subtract.reduce(np.percentile(x, [75,25]))
       C = constant from Hansen (2009)
    When using a Gaussian kernel this is equivalent to the 'scott' bandwidth up
    to two decimal places. This is the accuracy to which the 'scott' constant is
    specified.
    References
    ----------
    Silverman, B.W. (1986) `Density Estimation.`
    Hansen, B.E. (2009) `Lecture Notes on Nonparametrics.`
    """
    C = kernel.normal_reference_constant
    A = _select_sigma(x)
    n = len(x)
    return C * A * n ** (-0.2)
## Plug-In Methods ##
## Least Squares Cross-Validation ##
## Helper Functions ##
bandwidth_funcs = {
    "scott": bw_scott,
    "silverman": bw_silverman,
    "normal_reference": bw_normal_reference,
}
[docs]def select_bandwidth(x, bw, kernel):
    """
    Selects bandwidth for a selection rule bw
    this is a wrapper around existing bandwidth selection rules
    Parameters
    ----------
    x : array-like
        Array for which to get the bandwidth
    bw : string
        name of bandwidth selection rule, currently supported are:
        %s
    kernel : not used yet
    Returns
    -------
    bw : float
        The estimate of the bandwidth
    """
    bw = bw.lower()
    if bw not in bandwidth_funcs:
        raise ValueError("Bandwidth %s not understood" % bw)
#TODO: uncomment checks when we have non-rule of thumb bandwidths for diff. kernels
#    if kernel == "gauss":
    return bandwidth_funcs[bw](x, kernel) 
#    else:
#        raise ValueError("Only Gaussian Kernels are currently supported")
# Interpolate docstring to plugin supported bandwidths
select_bandwidth.__doc__ %=  (", ".join(sorted(bandwidth_funcs.keys())),)