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Linkage intensity learning approach with genetic algorithm for causality diagram

机译:因果图的关联强度学习与遗传算法

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The causality diagram theory, which adopts graphical expression of knowledge and direct intensity of causality, overcomes some shortages in belief network and has evolved into a mixed causality diagram methodology for discrete and continuous variable. But to give linkage intensity of causality diagram is difficult, particularly in many working conditions in which sampling data are limited or noisy. The classic learning algorithm is hard to be adopted. We used genetic algorithm to learn linkage intensity from limited data. The simulation results demonstrate that this algorithm is more suitable than the classic algorithm in the condition of sample shortage such as space shuttle's fault diagnoisis.
机译:因果图理论采用知识的图形表示和因果关系的直接强度,克服了信念网络的一些不足,并已发展成为用于离散变量和连续变量的混合因果图方法。但是很难给出因果关系图的链接强度,特别是在采样数据有限或嘈杂的许多工作条件下。经典的学习算法很难被采用。我们使用遗传算法从有限的数据中学习连锁强度。仿真结果表明,在航天飞机故障诊断等样本不足的情况下,该算法比经典算法更合适。

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