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A Fuzzy Embedded GA for Information Retrieving from Related Data Set

机译:用于从相关数据集中检索信息的模糊嵌入式遗传算法

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摘要

The arm of this work is to provide a formal model and an effective way for information retrieving from a big related data set. Based upon fuzzy logic operation, a fuzzy mathematical model of 0-1 mixture programming is addressed. Meanwhile, a density function indicating the overall possessive status of the effective mined out data is introduced. Then, a soft computing (SC) approach which is a genetic algorithm (GA) embedded fuzzy deduction is presented. During the SC process, fuzzy logic decision is taken into the uses of determining the genes' length, calculating fitness function and choosing feasible solution. Stimulated experiments and comparison tests show that the methods can match the user's most desired information from magnanimity data exactly and efficiently. The approaches can be extended in practical application in solving general web mining problem.
机译:这项工作的目的是为从大的相关数据集中检索信息提供正式的模型和有效的方法。基于模糊逻辑运算,提出了0-1混合规划的模糊数学模型。同时,引入了指示有效挖掘数据的总体占有状态的密度函数。然后,提出了一种软计算(SC)方法,它是一种遗传算法(GA)嵌入的模糊演绎。在SC过程中,模糊逻辑决策被用于确定基因的长度,计算适应度函数和选择可行的解决方案。刺激实验和比较测试表明,这些方法可以准确有效地匹配海量数据中用户最想要的信息。该方法可以在解决一般网络挖掘问题的实际应用中扩展。

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