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A rough sets based characteristic relation approach for dynamic attribute generalization in data mining

机译:基于粗糙集的特征关系方法在数据挖掘中的动态属性综合

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摘要

Any attribute set in an information system may be evolving in time when new information arrives. Approximations of a concept by rough set theory need updating for data mining or other related tasks. For incremental updating approximations of a concept, methods using the tolerance relation and similarity relation have been previously studied in literature. The characteristic relation-based rough sets approach provides more informative results than the tolerance-and-similarity relation based approach. In this paper, an attribute generalization and its relation to feature selection and feature extraction are firstly discussed. Then, a new approach for incrementally updating approximations of a concept is presented under the characteristic relation-based rough sets. Finally, the approach of direct computation of rough set approximations and the proposed approach of dynamic maintenance of rough set approximations are employed for performance comparison. An extensive experimental evaluation on a large soybean database from MLC shows that the proposed approach effectively handles a dynamic attribute generalization in data mining.
机译:信息系统中设置的任何属性都可能在新信息到达时随时间变化。粗集理论对概念的近似需要针对数据挖掘或其他相关任务进行更新。对于概念的增量更新近似,先前已经在文献中研究了使用公差关系和相似关系的方法。与基于容差和相似度关系的方法相比,基于特征关系的粗糙集方法提供的信息更多。本文首先讨论了一种属性概括及其与特征选择和特征提取的关系。然后,在基于特征关系的粗糙集下提出了一种增量更新概念近似的新方法。最后,将直接计算粗糙集近似值的方法和提出的动态维护粗糙集近似值的方法用于性能比较。对来自MLC的大型大豆数据库进行的广泛实验评估表明,该方法有效地处理了数据挖掘中的动态属性概括。

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