1,187 research outputs found
Homotopy Lie groups
Homotopy Lie groups, recently invented by W.G. Dwyer and C.W. Wilkerson,
represent the culmination of a long evolution. The basic philosophy behind the
process was formulated almost 25 years ago by Rector in his vision of a
homotopy theoretic incarnation of Lie group theory. What was then technically
impossible has now become feasible thanks to modern advances such as Miller's
proof of the Sullivan conjecture and Lannes's division functors. Today, with
Dwyer and Wilkerson's implementation of Rector's vision, the tantalizing
classification theorem seems to be within grasp. Supported by motivating
examples and clarifying exercises, this guide quickly leads, without ignoring
the context or the proof strategy, from classical finite loop spaces to the
important definitions and striking results of this new theory.Comment: 16 page
Functional summary statistics for point processes on the sphere with an application to determinantal point processes
We study point processes on , the -dimensional unit sphere
, considering both the isotropic and the anisotropic case, and
focusing mostly on the spherical case . The first part studies reduced
Palm distributions and functional summary statistics, including nearest
neighbour functions, empty space functions, and Ripley's and inhomogeneous
-functions. The second part partly discusses the appealing properties of
determinantal point process (DPP) models on the sphere and partly considers the
application of functional summary statistics to DPPs. In fact DPPs exhibit
repulsiveness, but we also use them together with certain dependent thinnings
when constructing point process models on the sphere with aggregation on the
large scale and regularity on the small scale. We conclude with a discussion on
future work on statistics for spatial point processes on the sphere
Variational approach for spatial point process intensity estimation
We introduce a new variational estimator for the intensity function of an
inhomogeneous spatial point process with points in the -dimensional
Euclidean space and observed within a bounded region. The variational estimator
applies in a simple and general setting when the intensity function is assumed
to be of log-linear form where is a spatial
covariate function and the focus is on estimating . The variational
estimator is very simple to implement and quicker than alternative estimation
procedures. We establish its strong consistency and asymptotic normality. We
also discuss its finite-sample properties in comparison with the maximum first
order composite likelihood estimator when considering various inhomogeneous
spatial point process models and dimensions as well as settings were is
completely or only partially known.Comment: Published in at http://dx.doi.org/10.3150/13-BEJ516 the Bernoulli
(http://isi.cbs.nl/bernoulli/) by the International Statistical
Institute/Bernoulli Society (http://isi.cbs.nl/BS/bshome.htm
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