多维数据投影任务的以用户为中心的分类法

Ronak Etemadpour, L. Linsen, C. Crick, A. Forbes
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引用次数: 14

摘要

当研究具有大量对象和/或维度的多维数据集时,可以使用各种可视化方法来有效地表示数据,并使用户能够在不同的细节级别上探索数据。为可视化分析对多维数据进行编码的一种常见策略是使用降维技术,将数据从高维投影到低维空间。在本文中,我们专注于输出2D或3D散点图的投影技术,这些散点图可以用于一系列数据分析任务。现有的多维数据投影分类法主要侧重于评估人类对类或聚类分离和/或保存的感知。然而,现实世界中复杂数据集的数据分析,除了聚类分离之外,往往还包括其他任务,如:聚类识别、相似性寻找、聚类排序、比较、对象计数等。本文的一个贡献是将子任务划分为四大类数据分析任务。我们认为这种以用户为中心的任务分类可以用来指导多维数据投影布局的组织。此外,当面对需要降维的复杂数据集时,这种分类法可以作为可视化设计人员的指导方针。我们的分类法旨在通过提供相关任务的扩展范围来帮助设计者评估可视化系统的有效性。这些任务是从对跨实际应用领域的可视化分析项目的广泛研究中收集的,所有这些都涉及到多维投影。除了任务调查和任务分类法的创建之外,我们还更详细地探讨了如何为特定任务有效地表示数据集的具体示例。这些案例研究,虽然不是详尽的,但为如何具体地推理任务和决定可视化方法提供了一个框架。也就是说,我们相信这个分类法将帮助可视化设计人员确定哪些可视化方法适合特定的多维数据投影任务。
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A User-centric Taxonomy for Multidimensional Data Projection Tasks
When investigating multidimensional data sets with very large numbers of objects and/or a very large number of dimensions, a variety of visualization methods can be employed in order to represent the data effectively and to enable the user to explore the data at different levels of detail. A common strategy for encoding multidimensional data for visual analysis is to use dimensionality reduction techniques that project data from higher dimensions onto a lower-dimensional space. In this paper, we focus on projection techniques that output 2D or 3D scatterplots which can then be used for a range of data analysis tasks. Existing taxonomies for multidimensional data projections focus primarily on tasks in order to evaluate the human perception of class or cluster separation and/or preservation. However, real-world data analysis of complex data sets often includes other tasks besides cluster separation, such as: cluster identification, similarity seeking, cluster ranking, comparisons, counting objects, etc. A contribution of this paper is the identification of subtasks grouped into four main categories of data analysis tasks. We believe that this user-centric task categorization can be used to guide the organization of multidimensional data projection layouts. Moreover, this taxonomy can be used as a guideline for visualization designers when faced with complex data sets requiring dimensionality reduction. Our taxonomy aims to help designers evaluate the effectiveness of a visualization system by providing an expanded range of relevant tasks. These tasks are gathered from an extensive study of visual analytics projects across real-world application domains, all of which involve multidimensional projection. In addition to our survey of tasks and the creation of the task taxonomy, we also explore in more detail specific examples of how to represent data sets effectively for particular tasks. These case studies, while not exhaustive, provide a framework for how specifically to reason about tasks and to decide on visualization methods. That is, we believe that this taxonomy will help visualization designers to determine which visualization methods are appropriate for specific multidimensional data projection tasks.
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