RipleysKEstimator¶
- class astropy.stats.RipleysKEstimator(area, x_max=None, y_max=None, x_min=None, y_min=None)[source]¶
Bases:
object
Estimators for Ripley’s K function for two-dimensional spatial data. See [1], [2], [3], [4], [5] for detailed mathematical and practical aspects of those estimators.
- Parameters:
- area
python:float
Area of study from which the points where observed.
- x_max, y_max
python:float
,python:float
, optional Maximum rectangular coordinates of the area of study. Required if
mode == 'translation'
ormode == ohser
.- x_min, y_min
python:float
,python:float
, optional Minimum rectangular coordinates of the area of study. Required if
mode == 'variable-width'
ormode == ohser
.
- area
References
[1]Peebles, P.J.E. The large scale structure of the universe. <https://ui.adsabs.harvard.edu/abs/1980lssu.book…..P>
[2]Spatial descriptive statistics. <https://en.wikipedia.org/wiki/Spatial_descriptive_statistics>
[3]Package spatstat. <https://cran.r-project.org/web/packages/spatstat/spatstat.pdf>
[4]Cressie, N.A.C. (1991). Statistics for Spatial Data, Wiley, New York.
[5]Stoyan, D., Stoyan, H. (1992). Fractals, Random Shapes and Point Fields, Akademie Verlag GmbH, Chichester.
Examples
>>> import numpy as np >>> from matplotlib import pyplot as plt >>> from astropy.stats import RipleysKEstimator >>> z = np.random.uniform(low=5, high=10, size=(100, 2)) >>> Kest = RipleysKEstimator(area=25, x_max=10, y_max=10, ... x_min=5, y_min=5) >>> r = np.linspace(0, 2.5, 100) >>> plt.plot(r, Kest.poisson(r)) >>> plt.plot(r, Kest(data=z, radii=r, mode='none')) >>> plt.plot(r, Kest(data=z, radii=r, mode='translation')) >>> plt.plot(r, Kest(data=z, radii=r, mode='ohser')) >>> plt.plot(r, Kest(data=z, radii=r, mode='var-width')) >>> plt.plot(r, Kest(data=z, radii=r, mode='ripley'))
Attributes Summary
Methods Summary
Hfunction
(data, radii[, mode])Evaluates the H function at
radii
.Lfunction
(data, radii[, mode])Evaluates the L function at
radii
.__call__
(data, radii[, mode])Call self as a function.
evaluate
(data, radii[, mode])Evaluates the Ripley K estimator for a given set of values
radii
.poisson
(radii)Evaluates the Ripley K function for the homogeneous Poisson process, also known as Complete State of Randomness (CSR).
Attributes Documentation
- area¶
- x_max¶
- x_min¶
- y_max¶
- y_min¶
Methods Documentation
- Hfunction(data, radii, mode='none')[source]¶
Evaluates the H function at
radii
. For parameter description seeevaluate
method.
- Lfunction(data, radii, mode='none')[source]¶
Evaluates the L function at
radii
. For parameter description seeevaluate
method.
- evaluate(data, radii, mode='none')[source]¶
Evaluates the Ripley K estimator for a given set of values
radii
.- Parameters:
- data2D
array
Set of observed points in as a n by 2 array which will be used to estimate Ripley’s K function.
- radii1D
array
Set of distances in which Ripley’s K estimator will be evaluated. Usually, it’s common to consider max(radii) < (area/2)**0.5.
- mode
python:str
Keyword which indicates the method for edge effects correction. Available methods are ‘none’, ‘translation’, ‘ohser’, ‘var-width’, and ‘ripley’.
- ‘none’
this method does not take into account any edge effects whatsoever.
- ‘translation’
computes the intersection of rectangular areas centered at the given points provided the upper bounds of the dimensions of the rectangular area of study. It assumes that all the points lie in a bounded rectangular region satisfying x_min < x_i < x_max; y_min < y_i < y_max. A detailed description of this method can be found on ref [4].
- ‘ohser’
this method uses the isotropized set covariance function of the window of study as a weight to correct for edge-effects. A detailed description of this method can be found on ref [4].
- ‘var-width’
this method considers the distance of each observed point to the nearest boundary of the study window as a factor to account for edge-effects. See [3] for a brief description of this method.
- ‘ripley’
this method is known as Ripley’s edge-corrected estimator. The weight for edge-correction is a function of the proportions of circumferences centered at each data point which crosses another data point of interest. See [3] for a detailed description of this method.
- data2D
- Returns:
- ripley1D
array
Ripley’s K function estimator evaluated at
radii
.
- ripley1D