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Knowledge discovery for geographical cellular automata

机译:地理细胞自动机的知识发现

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This paper proposes a new method for geographical simulation by applying data mining techniques to cellular automata. CA has strong capabilities in simulating complex systems. The core of CA is how to define transition rules. There are no good methods for defining these transition rules. They are usually defined by using heuristic methods and thus subject to uncertainties. Mathematical equations are used to represent transition rules implicitly and have limitations in capturing complex relationships. This paper demonstrates that the explicit transition rules of CA can be automatically reconstructed through the rule induction procedure of data mining. The proposed method can reduce the influences of individual knowledge and preferences in defining transition rules and generate more reliable simulation results. It can efficiently discover knowledge from a vast volume of spatial data.
机译:通过将数据挖掘技术应用于细胞自动机,提出了一种新的地理模拟方法。 CA具有模拟复杂系统的强大功能。 CA的核心是如何定义过渡规则。没有定义这些过渡规则的好方法。它们通常使用启发式方法进行定义,因此存在不确定性。数学方程式用于隐式表示过渡规则,并且在捕获复杂关系方面具有局限性。本文证明,可以通过数据挖掘的规则归纳程序自动重建CA的显式过渡规则。所提出的方法可以减少个体知识和偏好对定义过渡规则的影响,并产生更可靠的仿真结果。它可以有效地从大量空间数据中发现知识。

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