279 lines
9.8 KiB
Python
279 lines
9.8 KiB
Python
"""
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Author: Josef Perktold
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License: BSD-3
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"""
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import numpy as np
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from scipy import stats
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class NonlinearDeltaCov:
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'''Asymptotic covariance by Deltamethod
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The function is designed for 2d array, with rows equal to
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the number of equations or constraints and columns equal to the number
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of parameters. 1d params work by chance ?
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fun: R^{m*k) -> R^{m} where m is number of equations and k is
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the number of parameters.
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equations follow Greene
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This class does not use any caching. The intended usage is as a helper
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function. Extra methods have been added for convenience but might move
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to calling functions.
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The naming in this class uses params for the original random variable, and
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cov_params for it's covariance matrix. However, this class is independent
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of the use cases in support of the models.
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Parameters
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----------
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func : callable, f(params)
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Nonlinear function of the estimation parameters. The return of
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the function can be vector valued, i.e. a 1-D array.
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params : ndarray
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Parameters at which function `func` is evaluated.
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cov_params : ndarray
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Covariance matrix of the parameters `params`.
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deriv : function or None
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First derivative or Jacobian of func. If deriv is None, then a
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numerical derivative will be used. If func returns a 1-D array,
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then the `deriv` should have rows corresponding to the elements
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of the return of func.
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func_args : None
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Not yet implemented.
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'''
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def __init__(self, func, params, cov_params, deriv=None, func_args=None):
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self.fun = func
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self.params = params
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self.cov_params = cov_params
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self._grad = deriv
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self.func_args = func_args if func_args is not None else ()
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if func_args is not None:
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raise NotImplementedError('func_args not yet implemented')
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def grad(self, params=None, **kwds):
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"""First derivative, jacobian of func evaluated at params.
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Parameters
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----------
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params : None or ndarray
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Values at which gradient is evaluated. If params is None, then
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the attached params are used.
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TODO: should we drop this
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kwds : keyword arguments
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This keyword arguments are used without changes in the calulation
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of numerical derivatives. These are only used if a `deriv` function
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was not provided.
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Returns
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-------
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grad : ndarray
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gradient or jacobian of the function
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"""
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if params is None:
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params = self.params
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if self._grad is not None:
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return self._grad(params)
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else:
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# copied from discrete_margins
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try:
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from statsmodels.tools.numdiff import approx_fprime_cs
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jac = approx_fprime_cs(params, self.fun, **kwds)
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except TypeError: # norm.cdf doesn't take complex values
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from statsmodels.tools.numdiff import approx_fprime
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jac = approx_fprime(params, self.fun, **kwds)
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return jac
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def cov(self):
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"""Covariance matrix of the transformed random variable.
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"""
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g = self.grad()
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covar = np.dot(np.dot(g, self.cov_params), g.T)
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return covar
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def predicted(self):
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"""Value of the function evaluated at the attached params.
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Note: This is not equal to the expected value if the transformation is
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nonlinear. If params is the maximum likelihood estimate, then
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`predicted` is the maximum likelihood estimate of the value of the
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nonlinear function.
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"""
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predicted = self.fun(self.params)
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# TODO: why do I need to squeeze in poisson example
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if predicted.ndim > 1:
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predicted = predicted.squeeze()
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return predicted
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def wald_test(self, value):
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"""Joint hypothesis tests that H0: f(params) = value.
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The alternative hypothesis is two-sided H1: f(params) != value.
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Warning: this might be replaced with more general version that returns
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ContrastResults.
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currently uses chisquare distribution, use_f option not yet implemented
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Parameters
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----------
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value : float or ndarray
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value of f(params) under the Null Hypothesis
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Returns
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-------
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statistic : float
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Value of the test statistic.
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pvalue : float
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The p-value for the hypothesis test, based and chisquare
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distribution and implies a two-sided hypothesis test
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"""
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# TODO: add use_t option or not?
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m = self.predicted()
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v = self.cov()
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df_constraints = np.size(m)
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diff = m - value
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lmstat = np.dot(np.dot(diff.T, np.linalg.inv(v)), diff)
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return lmstat, stats.chi2.sf(lmstat, df_constraints)
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def var(self):
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"""standard error for each equation (row) treated separately
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"""
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g = self.grad()
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var = (np.dot(g, self.cov_params) * g).sum(-1)
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if var.ndim == 2:
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var = var.T
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return var
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def se_vectorized(self):
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"""standard error for each equation (row) treated separately
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"""
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var = self.var()
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return np.sqrt(var)
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def conf_int(self, alpha=0.05, use_t=False, df=None, var_extra=None,
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predicted=None, se=None):
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"""
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Confidence interval for predicted based on delta method.
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Parameters
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----------
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alpha : float, optional
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The significance level for the confidence interval.
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ie., The default `alpha` = .05 returns a 95% confidence interval.
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use_t : boolean
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If use_t is False (default), then the normal distribution is used
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for the confidence interval, otherwise the t distribution with
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`df` degrees of freedom is used.
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df : int or float
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degrees of freedom for t distribution. Only used and required if
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use_t is True.
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var_extra : None or array_like float
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Additional variance that is added to the variance based on the
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delta method. This can be used to obtain confidence intervalls for
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new observations (prediction interval).
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predicted : ndarray (float)
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Predicted value, can be used to avoid repeated calculations if it
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is already available.
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se : ndarray (float)
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Standard error, can be used to avoid repeated calculations if it
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is already available.
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Returns
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-------
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conf_int : array
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Each row contains [lower, upper] limits of the confidence interval
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for the corresponding parameter. The first column contains all
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lower, the second column contains all upper limits.
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"""
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# TODO: predicted and se as arguments to avoid duplicate calculations
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# or leave unchanged?
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if not use_t:
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dist = stats.norm
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dist_args = ()
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else:
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if df is None:
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raise ValueError('t distribution requires df')
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dist = stats.t
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dist_args = (df,)
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if predicted is None:
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predicted = self.predicted()
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if se is None:
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se = self.se_vectorized()
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if var_extra is not None:
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se = np.sqrt(se**2 + var_extra)
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q = dist.ppf(1 - alpha / 2., *dist_args)
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lower = predicted - q * se
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upper = predicted + q * se
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ci = np.column_stack((lower, upper))
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if ci.shape[1] != 2:
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raise RuntimeError('something wrong: ci not 2 columns')
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return ci
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def summary(self, xname=None, alpha=0.05, title=None, use_t=False,
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df=None):
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"""Summarize the Results of the nonlinear transformation.
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This provides a parameter table equivalent to `t_test` and reuses
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`ContrastResults`.
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Parameters
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-----------
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xname : list of strings, optional
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Default is `c_##` for ## in p the number of regressors
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alpha : float
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Significance level for the confidence intervals. Default is
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alpha = 0.05 which implies a confidence level of 95%.
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title : string, optional
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Title for the params table. If not None, then this replaces the
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default title
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use_t : boolean
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If use_t is False (default), then the normal distribution is used
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for the confidence interval, otherwise the t distribution with
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`df` degrees of freedom is used.
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df : int or float
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degrees of freedom for t distribution. Only used and required if
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use_t is True.
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Returns
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-------
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smry : string or Summary instance
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This contains a parameter results table in the case of t or z test
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in the same form as the parameter results table in the model
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results summary.
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For F or Wald test, the return is a string.
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"""
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# this is an experimental reuse of ContrastResults
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from statsmodels.stats.contrast import ContrastResults
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predicted = self.predicted()
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se = self.se_vectorized()
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# TODO check shape for scalar case, ContrastResults requires iterable
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predicted = np.atleast_1d(predicted)
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if predicted.ndim > 1:
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predicted = predicted.squeeze()
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se = np.atleast_1d(se)
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statistic = predicted / se
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if use_t:
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df_resid = df
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cr = ContrastResults(effect=predicted, t=statistic, sd=se,
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df_denom=df_resid)
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else:
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cr = ContrastResults(effect=predicted, statistic=statistic, sd=se,
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df_denom=None, distribution='norm')
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return cr.summary(xname=xname, alpha=alpha, title=title)
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