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26 April 2024
 
  » arxiv » physics/0210061

 Article overview



Foam: A General purpose Monte Carlo Cellular Algorithm
S. Jadach ;
Date 16 Oct 2002
Subject Computational Physics | physics.comp-ph
AbstractA general-purpose, self-adapting Monte Carlo (MC) algorithm implemented in the program { t Foam} is described. The high efficiency of the MC, that is small maximum weight or variance of the MC weight is achieved by means of dividing the integration domain into small cells. The cells can be $n$-dimensional simplices, hyperrectangles or a Cartesian product of them. The grid of cells, ``foam’’, is produced in the process of the binary split of the cells. The next cell to be divided and the position/direction of the division hyperplane is chosen by the algorithm which optimizes the ratio of the maximum weight to the average weight or (optionally) the total variance. The algorithm is able to deal, in principle, with an arbitrary pattern of the singularities in the distribution.
Source arXiv, physics/0210061
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