Markov Processes and Related Fields Volumen: 21 Número: 4 Páginas: 847-868
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Identifier
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https://repositorio.uchile.cl/handle/2250/138314
General note
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Artículo de publicación ISI
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Abstract
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For the STIT tessellation process, which is becoming one of the reference model in stochastic geometry for fracture modeling or cell division, we study several constructions in a window of R-l: A new method is provided which can be efficient for simulations of STIT in any dimension. Using an appropriate distribution for the dividing hyperplane, we prove that the cell to be divided can then be chosen equiprobably out of the intersected cells. Moreover, we supply an exact formula for the transition probabilities of this Markov process using a representation by binary trees.