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A rough set-based incremental approach for learning knowledge in dynamic incomplete information systems

机译:基于粗糙集的增量方法,用于动态不完整信息系统中的知识学习

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摘要

With the rapid growth of data sets nowadays, the object sets in an information system may evolve in time when new information arrives. In order to deal with the missing data and incomplete information in real decision problems, this paper presents a matrix based incremental approach in dynamic incomplete information systems. Three matrices (support matrix, accuracy matrix and coverage matrix) under four different extended relations (tolerance relation, similarity relation, limited tolerance relation and characteristic relation), are introduced to incomplete information systems for inducing knowledge dynamically. An illustration shows the procedure of the proposed method for knowledge updating. Extensive experimental evaluations on nine UCI datasets and a big dataset with millions of records validate the feasibility of our proposed approach.
机译:如今,随着数据集的快速增长,信息系统中的对象集可能会在新信息到达时及时发展。为了处理实际决策问题中的数据缺失和信息不完整,本文提出了一种基于矩阵的动态不完全信息系统增量式方法。将具有四个不同扩展关系(公差关系,相似关系,有限公差关系和特征关系)的三个矩阵(支持矩阵,准确性矩阵和覆盖矩阵)引入到不完整信息系统中,以动态地引入知识。图示说明了所提出的知识更新方法的过程。对9个UCI数据集和具有数百万条记录的大型数据集进行了广泛的实验评估,验证了我们提出的方法的可行性。

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