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Covariance and correlation / Probability theory / Stochastic processes / Data / Mathematical analysis / Spatial data analysis / Signal processing / Stationary process / Correlation function / Van Lieshout / Correlation and dependence / Point process
Date: 2016-08-02 06:58:14
Covariance and correlation
Probability theory
Stochastic processes
Data
Mathematical analysis
Spatial data analysis
Signal processing
Stationary process
Correlation function
Van Lieshout
Correlation and dependence
Point process

Ann Inst Stat Math:905–928 DOIs10463z Summary statistics for inhomogeneous marked point processes O. Cronie · M. N. M. van Lieshout

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