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Interactive local clustering operations for high dimensional data in parallel coordinates

机译:在平行坐标中对高维数据进行交互式本地聚类操作

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In this paper, we propose an approach of clustering data in parallel coordinates through interactive local operations. Different from many other methods in which clustering is globally applied to the whole dataset, our interactive scheme allows users to directly apply attractive and repulsive operators at regions of interests, taking advantages of an electricity interaction metaphor, for clutter reduction and cluster detection. Our design enables users to interact directly with the parallel coordinate plots and provides great flexibility in exploring and revealing underlying patterns. With instant feedback, our work allows users to dynamically adjust the clustering parameters to reach an optimum. We also supply the user with a graph indicating the logical relationship between clusters. Our experiments show that our scheme is more efficient than traditional methods in performing visual analysis tasks.
机译:在本文中,我们提出了一种通过交互式本地操作在平行坐标中对数据进行聚类的方法。与将聚类全局应用到整个数据集的许多其他方法不同,我们的交互式方案允许用户利用电交互隐喻的优势,直接将感兴趣的和排斥的运算符应用到感兴趣的区域,以减少混乱和进行聚类检测。我们的设计使用户可以直接与平行坐标图进行交互,并在探索和揭示潜在模式方面提供了极大的灵活性。通过即时反馈,我们的工作使用户可以动态调整聚类参数以达到最佳效果。我们还为用户提供了一个图表,指示群集之间的逻辑关系。我们的实验表明,我们的方案在执行视觉分析任务方面比传统方法更有效。

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