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Mining fuzzy association rules with 2-tuple linguistic terms in stock market data by using genetic algorithm

机译:遗传算法在股票数据中使用二元语言术语模糊关联规则

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An evolutionary approach for finding fuzzy association rule with 2-tuple linguistic representation model is presented in this work. We propose a method based on multi objective genetic algorithm for identifying fuzzy association rules without specifying minimum support and minimum confidence. In fact our algorithm extracts both association rules and membership function in one step. Also we use Iterative Rule Learning (IRL) process to try to cover those instances that were still uncovered. To evaluate the proposed algorithm we use the stock price dataset and compare our results with the fuzzy mining approach which uses uniform fuzzy partitioning to extract fuzzy association rule. Obtained results show that our technique outperforms the uniform fuzzy partitioning method.
机译:提出了一种用二元组语言表示模型寻找模糊关联规则的进化方法。我们提出了一种基于多目标遗传算法的方法,用于在不指定最小支持和最小置信度的情况下识别模糊关联规则。实际上,我们的算法只需一步即可提取关联规则和隶属函数。此外,我们使用迭代规则学习(IRL)流程来尝试覆盖那些仍未被发现的实例。为了评估所提出的算法,我们使用股票价格数据集,并将我们的结果与采用统一模糊划分提取模糊关联规则的模糊挖掘方法进行比较。所得结果表明,我们的技术优于统一的模糊划分方法。

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