多维聚类中聚类相似度的视觉探索

James Twellmeyer, M. Hutter, M. Behrisch, J. Kohlhammer, T. Schreck
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引用次数: 3

摘要

我们提出了一个可视化原型,用于支持一种称为TRIAGE的新型聚类方法。TRIAGE在相似性建模中使用了比加权平均值更具适应性和灵活性的聚合函数。虽然TRIAGE已经在实践中证明了自己,但复杂相似性模型的使用使得TRIAGE聚类的解释具有挑战性。我们通过为分析师提供所有相关数据属性的链接、基于矩阵的可视化来解决这一挑战。我们使用数据采样和矩阵序列化来支持对异构属性使用相同的视觉隐喻进行有效的概述和流畅的交互式探索。我们的原型的可用性在网络安全领域的实际使用场景的帮助下进行了演示和评估。
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The Visual Exploration of Aggregate Similarity for Multi-dimensional Clustering
We present a visualisation prototype for the support of a novel approach to clustering called TRIAGE. TRIAGE uses aggregation functions which are more adaptable and flexible than the weighted mean for similarity modelling. While TRIAGE has proven itself in practice, the use of complex similarity models makes the interpretation of TRIAGE clusterings challenging. We address this challenge by providing analysts with a linked, matrix-based visualisation of all relevant data attributes. We employ data sampling and matrix seriation to support both effective overviews and fluid, interactive exploration using the same visual metaphor for heterogeneous attributes. The usability of our prototype is demonstrated and assessed with the help of real-world usage scenarios from the cyber-security domain.
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