statsmodels.graphics.gofplots.qqplot
-
statsmodels.graphics.gofplots.qqplot(data, dist=, distargs=(), a=0, loc=0, scale=1, fit=False, line=None, ax=None)
[source] -
Q-Q plot of the quantiles of x versus the quantiles/ppf of a distribution.
Can take arguments specifying the parameters for dist or fit them automatically. (See fit under Parameters.)
Parameters: data : array-like
1d data array
dist : A scipy.stats or statsmodels distribution
Compare x against dist. The default is scipy.stats.distributions.norm (a standard normal).
distargs : tuple
A tuple of arguments passed to dist to specify it fully so dist.ppf may be called.
loc : float
Location parameter for dist
a : float
Offset for the plotting position of an expected order statistic, for example. The plotting positions are given by (i - a)/(nobs - 2*a + 1) for i in range(0,nobs+1)
scale : float
Scale parameter for dist
fit : boolean
If fit is false, loc, scale, and distargs are passed to the distribution. If fit is True then the parameters for dist are fit automatically using dist.fit. The quantiles are formed from the standardized data, after subtracting the fitted loc and dividing by the fitted scale.
line : str {?45?, ?s?, ?r?, q?} or None
Options for the reference line to which the data is compared:
- ?45? - 45-degree line
- ?s? - standardized line, the expected order statistics are scaled by the standard deviation of the given sample and have the mean added to them
- ?r? - A regression line is fit
- ?q? - A line is fit through the quartiles.
- None - by default no reference line is added to the plot.
ax : Matplotlib AxesSubplot instance, optional
If given, this subplot is used to plot in instead of a new figure being created.
Returns: fig : Matplotlib figure instance
If
ax
is None, the created figure. Otherwise the figure to whichax
is connected.See also
scipy.stats.probplot
Notes
Depends on matplotlib. If
fit
is True then the parameters are fit using the distribution?s fit() method.Examples
>>> import statsmodels.api as sm >>> from matplotlib import pyplot as plt >>> data = sm.datasets.longley.load() >>> data.exog = sm.add_constant(data.exog) >>> mod_fit = sm.OLS(data.endog, data.exog).fit() >>> res = mod_fit.resid # residuals >>> fig = sm.qqplot(res) >>> plt.show()
qqplot of the residuals against quantiles of t-distribution with 4 degrees of freedom:
>>> import scipy.stats as stats >>> fig = sm.qqplot(res, stats.t, distargs=(4,)) >>> plt.show()
qqplot against same as above, but with mean 3 and std 10:
>>> fig = sm.qqplot(res, stats.t, distargs=(4,), loc=3, scale=10) >>> plt.show()
Automatically determine parameters for t distribution including the loc and scale:
>>> fig = sm.qqplot(res, stats.t, fit=True, line='45') >>> plt.show()
The following plot displays some options, follow the link to see the code.
(Source code)
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