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Constraint Based Data Analysis for Multi-dimensional Data

机译:基于约束的多维数据数据分析

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In this paper, we present our research on data mining approaches with the existence of obstacles. Although there are a lot of algorithms designed to detect clusters with obstacles, few algorithms can detect clusters and outliers simultaneously and interactively. We here extend our original research [25] on iterative cluster and outlier detection to study the problem of detecting cluster and outliers iteratively with the presence of obstacles. Clusters and outliers are concepts of the same importance, so it is necessary to treat clusters and outliers in the same way in data analysis. In this algorithm, clusters are detected and adjusted according to the intra-relationship within clusters and the inter-relationship between clusters and outliers, and vice versa. The adjustment and modification of the clusters and outliers are performed iteratively until a certain termination condition is reached. This data processing algorithm can be applied in many fields such as pattern recognition, data clustering and signal processing.
机译:在本文中,我们展示了我们对存在障碍的数据挖掘方法的研究。尽管有很多算法设计用于检测障碍物的集群,但很少有算法可以同时和交互式检测集群和异常值。我们在这里扩展了我们的原始研究[25]在迭代集群和异常值检测中,以研究障碍物的存在迭代地检测集群和异常值。集群和异常值是相同重要性的概念,因此有必要以相同的数据分析处理集群和异常值。在该算法中,根据集群内的关系和集群和异常值之间的关系来检测和调整群集,反之亦然。孤立地执行簇和异常值的调整和修改,直到达到某个终端条件。该数据处理算法可以应用于许多字段,例如模式识别,数据聚类和信号处理。

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