matplotlib.axes.Axes.xcorr¶
-
Axes.xcorr(self, x, y, normed=True, detrend=<function detrend_none at 0x7f3919e930d0>, usevlines=True, maxlags=10, \*, data=None, \*\*kwargs)[source]¶ Plot the cross correlation between x and y.
The correlation with lag k is defined as \(\sum_n x[n+k] \cdot y^*[n]\), where \(y^*\) is the complex conjugate of \(y\).
Parameters: - xarray-like of length n
- yarray-like of length n
- detrendcallable, optional, default:
mlab.detrend_none x and y are detrended by the detrend callable. This must be a function
x = detrend(x)accepting and returning annumpy.array. Default is no normalization.- normedbool, optional, default: True
If
True, input vectors are normalised to unit length.- usevlinesbool, optional, default: True
Determines the plot style.
If
True, vertical lines are plotted from 0 to the xcorr value usingAxes.vlines. Additionally, a horizontal line is plotted at y=0 usingAxes.axhline.If
False, markers are plotted at the xcorr values usingAxes.plot.- maxlagsint, optional, default: 10
Number of lags to show. If None, will return all
2 * len(x) - 1lags.
Returns: - lagsarray (length
2*maxlags+1) The lag vector.
- carray (length
2*maxlags+1) The auto correlation vector.
- line
LineCollectionorLine2D Artistadded to the axes of the correlation:LineCollectionif usevlines is True.Line2Dif usevlines is False.
- b
Line2Dor None Horizontal line at 0 if usevlines is True None usevlines is False.
Other Parameters: - linestyle
Line2Dproperty, optional The linestyle for plotting the data points. Only used if usevlines is
False.- markerstr, optional, default: 'o'
The marker for plotting the data points. Only used if usevlines is
False.
Notes
The cross correlation is performed with
numpy.correlate()withmode = "full".Note
In addition to the above described arguments, this function can take a data keyword argument. If such a data argument is given, the following arguments are replaced by data[<arg>]:
- All arguments with the following names: 'x', 'y'.
Objects passed as data must support item access (
data[<arg>]) and membership test (<arg> in data).