statsmodels.nonparametric.kde.KDEUnivariate
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class statsmodels.nonparametric.kde.KDEUnivariate(endog)
[source] -
Univariate Kernel Density Estimator.
Parameters: endog : array-like
The variable for which the density estimate is desired.
See also
KDEMultivariate
,kdensity
,kdensityfft
Notes
If cdf, sf, cumhazard, or entropy are computed, they are computed based on the definition of the kernel rather than the FFT approximation, even if the density is fit with FFT = True.
KDEUnivariate
is much faster thanKDEMultivariate
, due to its FFT-based implementation. It should be preferred for univariate, continuous data.KDEMultivariate
also supports mixed data.Examples
>>> import statsmodels.api as sm >>> import matplotlib.pyplot as plt
>>> nobs = 300 >>> np.random.seed(1234) # Seed random generator >>> dens = sm.nonparametric.KDEUnivariate(np.random.normal(size=nobs)) >>> dens.fit() >>> plt.plot(dens.cdf) >>> plt.show()
Methods
cdf
()Returns the cumulative distribution function evaluated at the support. cumhazard
()Returns the hazard function evaluated at the support. entropy
()Returns the differential entropy evaluated at the support evaluate
(point)Evaluate density at a single point. fit
([kernel, bw, fft, weights, gridsize, ...])Attach the density estimate to the KDEUnivariate class. icdf
()Inverse Cumulative Distribution (Quantile) Function sf
()Returns the survival function evaluated at the support.
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