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A rough set approach to multiple dataset analysis

机译:粗集方法进行多数据集分析

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In the area of data mining, the discovery of valuable changes and connections (e.g., causality) from multiple data sets has been recognized as an important issue. This issue essentially differs from finding statistical associations in a single data set because it is complicated by the different data behaviors and relationships across multiple data sets. Using rough set theory, this paper proposes a change and connection mining algorithm for discovering a time delay between the quantitative changes in the data of two temporal information systems and for generating the association rules of changes from their connected decision table. We establish evaluation criteria for the connectedness of two temporal information systems with varying time delays by calculating weight-based accuracy and coverage of the association rules of changes, adjusted by a fuzzy membership function.
机译:在数据挖掘领域,从多个数据集中发现有价值的变化和联系(例如因果关系)已被认为是重要的问题。从本质上说,此问题与在单个数据集中查找统计关联不同,这是因为跨多个数据集的不同数据行为和关系使该问题变得复杂。利用粗糙集理论,提出了一种变化和联系挖掘算法,用于发现两个时间信息系统的数据的定量变化之间的时间延迟,并从其联系的决策表中生成变化的关联规则。我们通过计算基于权重的准确性和对变化的关联规则的覆盖范围(由模糊隶属度函数进行调整)来建立具有变化的时延的两个时间信息系统的连通性的评估标准。

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