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Rogério Zanon
Bio [2005]
Rogério Zanon is a graduate student while also working as a software
developer in Brazil. Having graduated in mathematics from the
Universidade de Sao Paulo, Rogério Miranda Zanon is pursuing a
master's degree at the Universidade Presbiteriana Mackenzie. There he
is working on genetic algorithms and cellular automata. His thesis is
about using genetic algorithms to solve computations, and his first
problem is the density classification task. Rogério is also project
manager at the company Vip Systems Informática, which develops
software for access control and shopping.
Project Title
Non-elementary Neighborhood Behavior in the Density Classification Task
Project

In this work we have a different focus on the density classification
task in elementary rule space. We make the cellular automata
evolution using a non-uniform neighborhood configuration. The 256
rules of elementary space were tested comparing their performance
between elementary and non-elementary neighborhoods. The
non-elementary uniform neighborhoods do not have relevant differences,
but we found 14 rules that measure relevant differences, in
non-elementary non-uniform neighborhoods, compared with elementary
neighborhoods, about twice as many.
We searched for the best neighborhood configuration in all the
possibilities for rule 232 in grid sizes 41, 51, 71 and 101. In each
grid the best neighborhood configurations were non-uniform
non-elementary with high performance, under 90%. The experiments
consisted of 500 initial conditions, periodic boundary, and 150 steps
for each evolution.
Favorite Four-Color, Nearest-Neighbor, Totalistic Rule

Rule chosen: 123245
I searched the cellular automata that contain the four states in the last
step. My choice is shown using the colors of my country (green, yellow,
blue, and white).
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