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On parameter estimation for doubly inhomogeneous cluster point processes

JOURNAL ARTICLE published May 2017 in Spatial Statistics

Research funded by INRA (2010-546-1) | Grant Agency of Czech Republic (16-03708S)

Authors: Tomáš Mrkvička | Samuel Soubeyrand

Poisson intensity parameter estimation for stationary Gibbs point processes of finite interaction range

JOURNAL ARTICLE published May 2013 in Spatial Statistics

Authors: Jean-François Coeurjolly | Nadia Morsli

A distribution-free spatial scan statistic for marked point processes

JOURNAL ARTICLE published November 2014 in Spatial Statistics

Authors: Lionel Cucala

Multivariate and Marked Point Processes

BOOK CHAPTER published 19 March 2010 in Handbook of Spatial Statistics

Parameter estimation for Gibbsian point processes

BOOK CHAPTER published 17 November 1988 in Statistical Inference for Spatial Processes

Stationary Marked Point Processes

OTHER published 15 January 2007 in Statistical Analysis and Modelling of Spatial Point Patterns

On the local odds ratio between points and marks in marked point processes

JOURNAL ARTICLE published August 2014 in Spatial Statistics

Authors: Tonglin Zhang | Qianlai Zhuang

Poisson point processes

BOOK CHAPTER published 25 September 2003 in Statistical Inference and Simulation for Spatial Point Processes

Bayesian modeling and decision theory for non-homogeneous Poisson point processes

JOURNAL ARTICLE published April 2020 in Spatial Statistics

Authors: Jiaxun Chen | Athanasios C. Micheas | Scott H. Holan

Bayesian Estimation and Segmentation of Spatial Point Processes Using Voronoi Tilings

BOOK CHAPTER published 16 May 2002 in Spatial Cluster Modelling

Quick inference for log Gaussian Cox processes with non-stationary underlying random fields

JOURNAL ARTICLE published October 2019 in Spatial Statistics

Research funded by The Danish Council for Independent Research – Natural Sciences (DFF – 701400074) | Villum Foundation, Denmark (8721) | Grant Agency of the Czech Republic (19-04412S)

Authors: Jiří Dvořák | Jesper Møller | Tomáš Mrkvička | Samuel Soubeyrand

Bayesian Estimation and Segmentation of Spatial Point Processes Using Voronoi Tilings

BOOK CHAPTER published 16 May 2002 in Spatial Cluster Modelling

Authors: S Byers | A Raftery

Edge correction for intensity estimation of 3D heterogeneous point processes from replicated data

JOURNAL ARTICLE published April 2020 in Spatial Statistics

Research funded by Saclay Plant Sciences-SPS, France (ANR-17-EUR-0007)

Authors: J. Burguet | P. Andrey

Standard and robust intensity parameter estimation for stationary determinantal point processes

JOURNAL ARTICLE published November 2016 in Spatial Statistics

Research funded by Danish Council for Independent Research — Natural Sciences (12-124675) | Villum Foundation (8721)

Authors: Christophe A.N. Biscio | Jean-François Coeurjolly

FLP estimation of semi-parametric models for space–time point processes and diagnostic tools

JOURNAL ARTICLE published November 2015 in Spatial Statistics

Authors: Giada Adelfio | Marcello Chiodi

Functional summary statistics for point processes on the sphere with an application to determinantal point processes

JOURNAL ARTICLE published November 2016 in Spatial Statistics

Research funded by Danish Council for Independent Research | Natural Sciences (12-124675) | Villum Foundation (8721)

Authors: Jesper Møller | Ege Rubak

Nonparametric Estimation

BOOK CHAPTER published 1998 in Statistical Inference for Spatial Poisson Processes

Authors: Yu. A. Kutoyants

The Change-Point Problems

BOOK CHAPTER published 1998 in Statistical Inference for Spatial Poisson Processes

Authors: Yu. A. Kutoyants

Edge corrections for spatial point processes

BOOK CHAPTER published 17 November 1988 in Statistical Inference for Spatial Processes

Strong Markov Property of Poisson Processes and Slivnyak Formula

BOOK CHAPTER published in Case Studies in Spatial Point Process Modeling

Authors: Sergei Zuyev