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spatstat.explore (version 3.1-0)

bw.CvL.adaptive: Select Adaptive Bandwidth for Kernel Estimation Using Cronie-Van Lieshout Criterion

Description

Uses the Cronie-Van Lieshout criterion to select the global smoothing bandwidth for adaptive kernel estimation of point process intensity.

Usage

bw.CvL.adaptive(X, ..., 
            hrange = NULL, nh = 16, h=NULL,
            bwPilot = bw.scott.iso(X),
            edge = FALSE, diggle = TRUE)

Value

A single numerical value giving the selected global bandwidth. The result also belongs to the class "bw.optim"

which can be plotted.

Arguments

X

A point pattern (object of class "ppp").

...

Additional arguments passed to densityAdaptiveKernel.

hrange

Optional numeric vector of length 2 giving the range of values of global bandwidth h to be searched.

nh

Optional integer giving the number of values of bandwidth h to search.

h

Optional. Vector of values of the bandwidth to be searched. Overrides the values of nh and hrange.

bwPilot

Pilot bandwidth. A scalar value in the same units as the coordinates of X. The smoothing bandwidth for computing an initial estimate of intensity using density.ppp.

edge

Logical value indicating whether to apply edge correction.

diggle

Logical. If TRUE, use the Jones-Diggle improved edge correction, which is more accurate but slower to compute than the default correction.

Author

Marie-Colette Van Lieshout. Modified by Adrian Baddeley Adrian.Baddeley@curtin.edu.au.

Details

This function selects an appropriate value of global bandwidth h0 for adaptive kernel estimation of the intensity function for the point pattern X.

In adaptive estimation, each point in the point pattern is subjected to a different amount of smoothing, controlled by data-dependent or spatially-varying bandwidths. The global bandwidth h0 is a scale factor which is used to adjust all of the data-dependent bandwidths according to the Abramson (1982) square-root rule.

This function considers each candidate value of bandwidth \(h\), performs the smoothing steps described above, extracts the adaptively-estimated intensity values \(\hat\lambda(x_i)\) at each data point \(x_i\), and calculates the Cronie-Van Lieshout criterion $$ \mbox{CvL}(h) = \sum_{i=1}^n \frac 1 {\hat\lambda(x_i)}. $$ The value of \(h\) which minimises the squared difference $$ LP2(h) = (CvL(h) - |W|)^2 $$ (where |W| is the area of the window of X) is selected as the optimal global bandwidth.

Bandwidths h are physical distance values expressed in the same units as the coordinates of X.

References

Abramson, I. (1982) On bandwidth variation in kernel estimates --- a square root law. Annals of Statistics, 10(4), 1217-1223.

Cronie, O and Van Lieshout, M N M (2018) A non-model-based approach to bandwidth selection for kernel estimators of spatial intensity functions, Biometrika, 105, 455-462.

Van Lieshout, M.N.M. (2021) Infill asymptotics for adaptive kernel estimators of spatial intensity. Australian and New Zealand Journal of Statistics 63 (1) 159--181.

See Also

adaptive.density, densityAdaptiveKernel, bw.abram, density.ppp.

To select a fixed smoothing bandwidth using the Cronie-Van Lieshout criterion, use bw.CvL.

Examples

Run this code
  h0 <- bw.CvL.adaptive(redwood3)
  plot(h0)
  plot(as.fv(h0), CvL ~ h)
  Z <- densityAdaptiveKernel(redwood3, h0)
  plot(Z)

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