G. Fuglstad, D. Simpson, F. Lindgren, and H. Rue, Constructing priors that penalize the complexity of Gaussian random fields, Journal of the American Statistical Association, pp.1-8, 2018.

E. Gabriel, T. Opitz, and F. Bonneu, Detecting and modeling multi-scale space-time structures: the case of wildfire occurrences, Journal of the French Statistical Society (Special Issue on Space-Time Statistics), vol.158, pp.86-105, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01401955

M. Genton, D. Butry, M. Gumpertz, and J. Prestemon, Spatio-temporal analysis of wildfire ignitions in the St Johns River water management district, p.470, 2006.

F. , International Journal of Wildland Fire, vol.15, pp.87-97

V. Gómez-rubio, M. Cameletti, and F. Finazzi, Analysis of massive marked point patterns with stochastic partial differential equations, Spatial Statistics, vol.14, pp.179-196, 2015.

S. Iaco, D. Myers, and D. Posa, Spacetime analysis using a general 475 productsum model, Statistics Probability Letters, vol.52, pp.21-28, 2001.

J. B. Illian, S. H. Sørbye, and H. Rue, A toolbox for fitting complex spatial point process models using integrated nested Laplace approximation (INLA), The Annals of Applied Statistics, pp.1499-1530, 2012.

P. Juan, J. Mateu, and M. Saez, Pinpointing spatio-temporal interactions 480 in wildfire patterns, Stochastic Environmental Research and Risk Assessment, vol.26, pp.1131-1150, 2012.

E. T. Krainski, V. Gómez-rubio, H. Bakka, A. Lenzi, D. Castro-camilo et al., Advanced Spatial Modeling with Stochastic Partial Differential Equations Using R and INLA, 2018.

F. Lindgren and H. Rue, Bayesian spatial modelling with r-inla, Journal of Statistical Software, p.63, 2015.

F. Lindgren, H. Rue, and J. Lindström, An explicit link between Gaussian fields and Gaussian Markov random fields: the stochastic partial differ-490 ential equation approach, Journal of the Royal Statistical Society (Series B), vol.73, pp.423-498, 2011.

L. Lombardo, T. Opitz, and R. Huser, Point process-based modeling of multiple debris flow landslides using INLA: an application to the, 2009.

M. Disaster, Stochastic environmental research and risk assessment, vol.32, pp.495-2179

J. Møller and C. Diaz-avalos, Structured spatio-temporal shot-noise cox point process models, with a view to modelling forest fires, Scandinavian Journal of Statistics, vol.37, pp.2-25, 2010.

T. Opitz, Latent Gaussian modeling and INLA: A review with focus 500 on space-time applications, Journal of the French Statistical Society (Special Issue on Space-Time Statistics, p.158, 2017.

E. J. Pebesma, Multivariable geostatistics in S: the gstat package. Computers & Geosciences, vol.30, pp.683-691, 2004.

P. Pereira, K. Turkman, M. Amaral-turkman, A. Sa, and J. Pereira, , 2013.

, Quantification of annual wildfire risk: A spatio-temporal point process approach, Statistica, vol.73, pp.55-68

H. Rue, S. Martino, and N. Chopin, Approximate Bayesian inference for latent Gaussian models by using integrated nested Laplace approximations, Journal of the Royal Statistical Society (Series B), vol.71, pp.319-392, 2009.

H. Rue, A. Riebler, S. H. Sørbye, J. B. Illian, D. P. Simpson et al., Bayesian computing with INLA: a review, Annual Review of Statistics and Its Application, vol.4, pp.395-421, 2017.

L. Serra, M. Saez, J. Mateu, D. Varga, P. Juan et al., Spatio-temporal log-Gaussian Cox processes for modelling wildfire 515 occurrence: the case of Catalonia, Environmental and Ecological Statistics, vol.21, pp.531-563, 2014.

D. Simpson, H. Rue, A. Riebler, T. G. Martins, and S. H. Sørbye, , 2017.

, Penalising model component complexity: A principled, practical approach to constructing priors, Statistical Science, vol.32, pp.1-28

S. H. Sorbye and H. Rue, Scaling intrinsic Gaussian Markov random field priors in spatial modelling, Spatial Statistics, vol.8, pp.39-51, 2014.

R. Turner, Point patterns of forest fire locations, Environmental and Ecological Statistics, vol.16, pp.197-223, 2009.

R. Waagepetersen and Y. Guan, Two-step estimation for inhomogeneous 525 spatial point processes, Journal of the Royal Statistical Society (Series B), vol.71, pp.685-702, 2009.

H. Xu and F. Schoenberg, Point process modelling of wildfire, The Annals of Applied Statistics, vol.5, pp.684-704, 2011.