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An evolutionary algorithm to discover quantitative association rules in multidimensional time series

机译:发现多维时间序列中定量关联规则的进化算法

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An evolutionary approach for finding existing relationships among several variables of a multidimensional time series is presented in this work. The proposed model to discover these relationships is based on quantitative association rules. This algorithm, called QARGA (Quantitative Association Rules by Genetic Algorithm), uses a particular codification of the individuals that allows solving two basic problems. First, it does not perform a previous attribute discretization and, second, it is not necessary to set which variables belong to the antecedent or consequent. Therefore, it may discover all underlying dependencies among different variables. To evaluate the proposed algorithm three experiments have been carried out. As initial step, several public datasets have been analyzed with the purpose of comparing with other existing evolutionary approaches. Also, the algorithm has been applied to synthetic time series (where the relationships are known) to analyze its potential for discovering rules in time series. Finally, a real-world multidimensional time series composed by several climatological variables has been considered. All the results show a remarkable performance of QARGA.
机译:在这项工作中提出了一种进化方法,用于寻找多维时间序列的多个变量之间的现有关系。提出的发现这些关系的模型基于定量关联规则。该算法称为QARGA(遗传算法的定量关联规则),它使用个体的特殊编码来解决两个基本问题。首先,它不执行先前的属性离散化,其次,没有必要设置哪些变量属于先前变量或后续变量。因此,它可能会发现不同变量之间的所有潜在依赖性。为了评估提出的算法,进行了三个实验。作为第一步,已经分析了几个公共数据集,目的是与其他现有的进化方法进行比较。而且,该算法已应用于合成时间序列(已知关系),以分析其发现时间序列规则的潜力。最后,考虑了由多个气候变量组成的现实世界多维时间序列。所有结果均显示了QARGA的出色性能。

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