DRlib is a C++ library for modeling, simulation and inference of marked
DRlib is a C++ library for modeling, simulation and inference of marked
point processes.
point processes.
The aim is to complement existing tools, such as the spatstat library in R [1], with reliable and efficient C++ code allowing intensive Bayesian MCMC-based inference for marked Gibbs point processes with interactions. This proposal has its roots in the MPPLIB library developed mainly by [B,C], where exact simulation algorithms for marked point processes have been programmed in C++ to perform
The aim is to complement existing tools, such as the spatstat library in R [Baddeley et al., 2016], with reliable and efficient C++ code allowing intensive Bayesian MCMC-based inference for marked Gibbs point processes with interactions. This proposal has its roots in the MPPLIB library developed mainly by [van Lieshout and Stoica, 2006], where exact simulation algorithms for marked point processes have been programmed in C++ to perform
massive simulation studies. This library was developed as part of the research of the authors whose names are in italics in the references. Its long-term goal is to create effective and reusable IT tools.
massive simulation studies. This library was developed as part of the research of the authors whose names are in italics in the references. Its long-term goal is to create effective and reusable IT tools.
The current version of the library is freely available at the following address https://gitlab.univ-lorraine.fr/labos/iecl/drlib.
The current version of the library is freely available at the following address https://gitlab.univ-lorraine.fr/labos/iecl/drlib.
## References
## References
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"DRlib: a C++ library for marked Gibbs point processes simulation and inference." 21st Annual Conference of the International Association for Mathematical Geosciences, IAMG 2022, 2022. [[PDF](https://hal.science/hal-04047676v1/file/IAMG_poster_2022.pdf)] | [[HAL](https://hal.science/hal-04047676)]
"DRlib: a C++ library for marked Gibbs point processes simulation and inference." 21st Annual Conference of the International Association for Mathematical Geosciences, IAMG 2022, 2022. [[PDF](https://hal.science/hal-04047676v1/file/IAMG_poster_2022.pdf)] | [[HAL](https://hal.science/hal-04047676)]
- R. S. Stoica, M. Deaconu, A. Philippe and L. Hurtado-Gil.
- R. S. Stoica, M. Deaconu, A. Philippe and L. Hurtado-Gil.
"Shadow Simulated Annealing: a new algorithm for approximate Bayesian inference of Gibbs point processes". In: Spatial Statistics 43 (2021), pp. 1–21.
"Shadow Simulated Annealing: a new algorithm for approximate Bayesian inference of Gibbs point processes". In: Spatial Statistics 43 (2021), pp. 1–21.[[PUB](https://www.sciencedirect.com/science/article/abs/pii/S2211675321000154)]|[[HAL](https://hal.science/hal-02183506)]
- R. S. Stoica, A. Philippe, P. Gregori and J. Mateu.
- R. S. Stoica, A. Philippe, P. Gregori and J. Mateu.
"ABC Shadow algorithm: a tool for statistical analysis of spatial patterns". In: Statistics and Computing 27, (2017), pp. 1225–1238.
"ABC Shadow algorithm: a tool for statistical analysis of spatial patterns". In: Statistics and Computing 27, (2017), pp. 1225–1238.[[PUB](https://link.springer.com/article/10.1007/s11222-016-9682-x)]|[[ARXIV](https://arxiv.org/abs/1507.04228)]
- A. J. Baddeley, E. Rubak and R. Turner.
- A. J. Baddeley, E. Rubak and R. Turner.
"Spatial Point Patterns: Methodology and Applications with R." London: Chapman and Hall/CRC Press, 2016.
"Spatial Point Patterns: Methodology and Applications with R." London: Chapman and Hall/CRC Press, 2016.[[PUB](https://www.sciencedirect.com/science/article/abs/pii/S0167947306000703)]|[[CWI](https://ir.cwi.nl/pub/4159)]
- M. N. M. van Lieshout and R. S. Stoica.
- M. N. M. van Lieshout and R. S. Stoica.
"Perfect simulation for marked point processes". In: Computational Statistics and Data Analysis 51 (2006), pp. 679–698.
"Perfect simulation for marked point processes". In: Computational Statistics and Data Analysis 51 (2006), pp. 679–698.[[BOOK](https://www.routledge.com/Spatial-Point-Patterns-Methodology-and-Applications-with-R/Baddeley-Rubak-Turner/p/book/9781482210200)]|[[BOOK](https://book.spatstat.org/)]
## To start quickly and test
## To start quickly and test
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## Authors and acknowledgments
## Authors and acknowledgments
Authors : Didier Gemmerlé, Radu Stefan Stoica, Chistophe Reype and Nathan Gillot.
Authors : Didier Gemmerlé, Radu Stefan Stoica, Chistophe Reype and Nathan Gillot.
Contributor : Pierre Auburtin and Diego Astaburuaga.
Contributors : Pierre Auburtin and Diego Astaburuaga.