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A Composite Likelihood Approach in Fitting Spatial Point Process Models
by
Guan, Yongtao
in
Applications
/ Asymptotic properties
/ Clefs
/ Composite likelihood
/ Data analysis
/ Ergodic theory
/ Estimation
/ Estimators
/ Exact sciences and technology
/ General topics
/ Inference from stochastic processes; time series analysis
/ Mathematical models
/ Mathematics
/ Maximum likelihood method
/ Model testing
/ Modeling
/ Point estimators
/ Probability
/ Probability and statistics
/ Probability theory and stochastic processes
/ Processes
/ Sciences and techniques of general use
/ Seedlings
/ Simulation
/ Simulations
/ Spatial models
/ Spatial point process
/ Spatial points
/ Statistical methods
/ Statistics
/ Stochastic processes
/ Theory and Methods
2006
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A Composite Likelihood Approach in Fitting Spatial Point Process Models
by
Guan, Yongtao
in
Applications
/ Asymptotic properties
/ Clefs
/ Composite likelihood
/ Data analysis
/ Ergodic theory
/ Estimation
/ Estimators
/ Exact sciences and technology
/ General topics
/ Inference from stochastic processes; time series analysis
/ Mathematical models
/ Mathematics
/ Maximum likelihood method
/ Model testing
/ Modeling
/ Point estimators
/ Probability
/ Probability and statistics
/ Probability theory and stochastic processes
/ Processes
/ Sciences and techniques of general use
/ Seedlings
/ Simulation
/ Simulations
/ Spatial models
/ Spatial point process
/ Spatial points
/ Statistical methods
/ Statistics
/ Stochastic processes
/ Theory and Methods
2006
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Do you wish to request the book?
A Composite Likelihood Approach in Fitting Spatial Point Process Models
by
Guan, Yongtao
in
Applications
/ Asymptotic properties
/ Clefs
/ Composite likelihood
/ Data analysis
/ Ergodic theory
/ Estimation
/ Estimators
/ Exact sciences and technology
/ General topics
/ Inference from stochastic processes; time series analysis
/ Mathematical models
/ Mathematics
/ Maximum likelihood method
/ Model testing
/ Modeling
/ Point estimators
/ Probability
/ Probability and statistics
/ Probability theory and stochastic processes
/ Processes
/ Sciences and techniques of general use
/ Seedlings
/ Simulation
/ Simulations
/ Spatial models
/ Spatial point process
/ Spatial points
/ Statistical methods
/ Statistics
/ Stochastic processes
/ Theory and Methods
2006
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A Composite Likelihood Approach in Fitting Spatial Point Process Models
Journal Article
A Composite Likelihood Approach in Fitting Spatial Point Process Models
2006
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Overview
We propose a new likelihood-based approach in fitting spatial point process models. A composite likelihood is first formed by adding some pairwise composite likelihood functions that are defined in terms of the second-order intensity function of the underlying process, and then used for estimating the unknown parameters. The estimation procedure is computationally simple and yields consistent and asymptotically normal estimators under some mild conditions. We demonstrate through a simulation study and applications to two real data examples that the proposed approach may lead to improved estimations compared with the commonly used \"minimum contrast estimation\" approach.
Publisher
Taylor & Francis,American Statistical Association,Assoc,Taylor & Francis Ltd
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