多维投影中可靠聚类分析的失真感知刷刷。

IF 6.5
Hyeon Jeon, Michael Aupetit, Soohyun Lee, Kwon Ko, Youngtaek Kim, Ghulam Jilani Quadri, Jinwook Seo
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引用次数: 0

摘要

刷刷是2D散点图中常见的交互技术,允许用户在连续的封闭区域内选择聚类点,以进行进一步分析或过滤。然而,将传统的刷图应用于多维(MD)数据的二维表示,即多维投影(mdp),可能会导致不可靠的聚类分析,因为mdp引起的扭曲不能准确地代表原始MD数据的聚类结构。为了缓解这个问题,我们为mdp引入了一种新的刷刷技术,称为扭曲感知刷刷。当用户执行刷图时,扭曲感知刷图通过动态重新定位投影中的点来纠正当前刷图点周围的扭曲,在MD空间中拉离刷图点近的数据点,同时推离较远的数据点。这种动态调整有助于用户更准确地刷MD聚类,从而导致更可靠的聚类分析。我们对24名参与者的用户研究表明,扭曲感知刷牙在准确分离MD空间中的簇方面明显优于先前的mdp刷牙技术,并且对扭曲保持鲁棒性。我们通过两个用例进一步证明了我们技术的有效性:(1)对地理空间数据进行聚类分析,(2)交互式标记MD聚类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distortion-aware Brushing for Reliable Cluster Analysis in Multidimensional Projections.

Brushing is a common interaction technique in 2D scatterplots, allowing users to select clustered points within a continuous, enclosed region for further analysis or filtering. However, applying conventional brushing to 2D representations of multidimensional (MD) data, i.e., Multidimensional Projections (MDPs), can lead to unreliable cluster analysis due to MDP-induced distortions that inaccurately represent the cluster structure of the original MD data. To alleviate this problem, we introduce a novel brushing technique for MDPs called Distortion-aware brushing. As users perform brushing, Distortion-aware brushing correct distortions around the currently brushed points by dynamically relocating points in the projection, pulling data points close to the brushed points in MD space while pushing distant ones apart. This dynamic adjustment helps users brush MD clusters more accurately, leading to more reliable cluster analysis. Our user studies with 24 participants show that Distortion-aware brushing significantly outperforms previous brushing techniques for MDPs in accurately separating clusters in the MD space and remains robust against distortions. We further demonstrate the effectiveness of our technique through two use cases: (1) conducting cluster analysis of geospatial data and (2) interactively labeling MD clusters.

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