基于多吸引子元胞自动机的树形框架分类器研究

Min Fang, WenKe Niu, Xiaosong Zhang
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引用次数: 2

摘要

模式空间的划分作为单元空间的视图是统一的划分,很难适应空间非统一划分的需要。本文结合CART算法构造了一个树形结构的元胞自动机分类器。基于粒子群优化方法研究了多吸引子元胞自动机特征矩阵的构造方法,该方法可以构造多吸引子元胞自动机的节点。该分类器在使用较少比特的伪穷穷域的情况下,解决了非均匀划分问题,获得了较好的分类性能。实验结果表明,该算法比采用多吸引子元胞自动机的算法精度更高。
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Research on the classifier with the tree frame based on multiple attractor cellular automaton
The partition of a pattern space as the view of a cell space is a uniform partition, it is difficult to adapt to the needs of spatial non-uniform partition. In this paper, a cellular automaton classifier with a tree structure is constructed by combing with the CART algorithm. The construction method of the characteristic matrix of the multiple attractor cellular automata is studied based on the particle swarm optimization method, and this method can build the nodes of the multiple attractor cellular automata. This kind of classifier can solve the non-uniform partition problem and obtain a good classification performance while using a pseudo-exhaustive field with less bits. The experiment results show that our algorithm is more accurate than those obtained through the multiple attractor cellular automata.
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