Generates a Significance Trace of the Diggle(1986)/ Cressie (1991)/ Loosmore and Ford (2006) test or the Maximum Absolute Deviation test for a spatial point pattern.
dclf.sigtrace(X, …)
mad.sigtrace(X, …)
mctest.sigtrace(X, fun=Lest, …,
                exponent=1, interpolate=FALSE, alpha=0.05,
                confint=TRUE, rmin=0)Either a point pattern (object of class "ppp", "lpp"
    or other class), a fitted point process model (object of class "ppm",
    "kppm" or other class) or an envelope object (class
    "envelope").
Arguments passed to envelope
    or mctest.progress.
    Useful arguments include fun to determine the summary
    function, nsim to specify the number of Monte Carlo
    simulations, alternative to specify a one-sided test,
    and verbose=FALSE to turn off the messages.
Function that computes the desired summary statistic for a point pattern.
Positive number. The exponent of the \(L^p\) distance. See Details.
Logical value specifying whether to calculate the \(p\)-value
    by interpolation.
    If interpolate=FALSE (the default), a standard Monte Carlo test
    is performed, yielding a \(p\)-value of the form \((k+1)/(n+1)\)
    where \(n\) is the number of simulations and \(k\) is the number
    of simulated values which are more extreme than the observed value.
    If interpolate=TRUE, the \(p\)-value is calculated by
    applying kernel density estimation to the simulated values, and
    computing the tail probability for this estimated distribution.
Significance level to be plotted (this has no effect on the calculation but is simply plotted as a reference value).
Logical value indicating whether to compute a confidence interval for the ‘true’ \(p\)-value.
Optional. Left endpoint for the interval of \(r\) values on which the test statistic is calculated.
An object of class "fv" that can be plotted to
  obtain the significance trace.
The Diggle (1986)/ Cressie (1991)/Loosmore and Ford (2006) test and the 
  Maximum Absolute Deviation test for a spatial point pattern
  are described in dclf.test.
  These tests depend on the choice of an interval of
  distance values (the argument rinterval).
  A significance trace (Bowman and Azzalini, 1997;
  Baddeley et al, 2014, 2015)
  of the test is a plot of the \(p\)-value
  obtained from the test against the length of
  the interval rinterval.
The command dclf.sigtrace performs 
  dclf.test on X using all possible intervals
  of the form \([0,R]\), and returns the resulting \(p\)-values
  as a function of \(R\).
Similarly mad.sigtrace performs
  mad.test using all possible intervals
  and returns the \(p\)-values.
More generally, mctest.sigtrace performs a test based on the
  \(L^p\) discrepancy between the curves. The deviation between two
  curves is measured by the \(p\)th root of the integral of
  the \(p\)th power of the absolute value of the difference
  between the two curves. The exponent \(p\) is
  given by the argument exponent. The case exponent=2
  is the Cressie-Loosmore-Ford test, while exponent=Inf is the
  MAD test.
If the argument rmin is given, it specifies the left endpoint
  of the interval defining the test statistic: the tests are
  performed using intervals \([r_{\mbox{\scriptsize min}},R]\)
  where \(R \ge r_{\mbox{\scriptsize min}}\).
The result of each command
  is an object of class "fv" that can be plotted to
  obtain the significance trace. The plot shows the Monte Carlo
  \(p\)-value (solid black line), 
  the critical value 0.05 (dashed red line),
  and a pointwise 95% confidence band (grey shading)
  for the ‘true’ (Neyman-Pearson) \(p\)-value.
  The confidence band is based on the Agresti-Coull (1998)
  confidence interval for a binomial proportion (when
  interpolate=FALSE) or the delta method
  and normal approximation (when interpolate=TRUE).
If X is an envelope object and fun=NULL then
  the code will re-use the simulated functions stored in X.
Agresti, A. and Coull, B.A. (1998) Approximate is better than “Exact” for interval estimation of binomial proportions. American Statistician 52, 119--126.
Baddeley, A., Diggle, P., Hardegen, A., Lawrence, T., Milne, R. and Nair, G. (2014) On tests of spatial pattern based on simulation envelopes. Ecological Monographs 84(3) 477--489.
Baddeley, A., Hardegen, A., Lawrence, L., Milne, R.K., Nair, G.M. and Rakshit, S. (2015) Pushing the envelope: extensions of graphical Monte Carlo tests. Submitted for publication.
Bowman, A.W. and Azzalini, A. (1997) Applied smoothing techniques for data analysis: the kernel approach with S-Plus illustrations. Oxford University Press, Oxford.
dclf.test for the tests;
  dclf.progress for progress plots.
See plot.fv for information on plotting
  objects of class "fv".
See also dg.sigtrace.
# NOT RUN {
  plot(dclf.sigtrace(cells, Lest, nsim=19))
# }
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