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Searching Cellular Automata Rules for Solving Two-Dimensional Binary Classification Problem

机译:搜索元胞自动机规则以解决二维二进制分类问题

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This paper proposes a cellular automata-based solution of a two-dimensional binary classification problem. The proposed method is based on a two-dimensional, three-state cellular automaton (CA) with the von Neumann neighborhood. Since the number of possible CA rules (potential CA-based classifiers) is huge, searching efficient rules is conducted with use of a genetic algorithm (GA). Experiments show an very good performance of discovered rules in solving the classification problem. The best found rules perform better than the heuristic CA rule designed by a human and also better than one of the most widely used statistical method: the k-nearest neighbors algorithm (k-NN). Experiments show that CAs rules can be successfully reused in the process of searching new rules.
机译:本文提出了一种基于元胞自动机的二维二进制分类问题的解决方案。所提出的方法基于具有冯·诺依曼邻域的二维,三态细胞自动机(CA)。由于可能的CA规则(基于CA的潜在分类器)的数量众多,因此使用遗传算法(GA)进行有效的搜索规则。实验表明,所发现的规则在解决分类问题方面具有很好的表现。发现的最佳规则的性能优于人工设计的启发式CA规则,也优于最广泛使用的统计方法之一:k最近邻居算法(k-NN)。实验表明,CA规则可以在搜索新规则的过程中成功重用。

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