视觉分析的信息理论措施:银券?

Laura A. McNamara, Travis L. Bauer, Michael J. Haass, Laura E. Matzen
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引用次数: 1

摘要

在本文中,我们认为信息理论度量可以提供一个健壮的,广泛适用的,可重复的度量来评估一个系统如何使人们将高维数据减少到主题相关的信息子集。电子数据的爆炸式增长需要开发平衡自动化与人类认知参与的系统,以促进模式发现、分析和表征,这被称为“认知增强”或“洞察生成”。然而,以任何可测量的方式实现洞察力的概念仍然是可视化研究人员面临的一个困难挑战。洞察力评估的“金券”将是一个精确的、可推广的、可重复的、生态有效的度量,它表明系统在提高认知表现或促进洞察力方面的相对效用。不幸的是,金奖券还不存在。取而代之的是,我们正在探索从香农关于信息和熵的思想中衍生出来的信息理论度量,作为评估分析工具的精确、可重复和可推广方法的起点。我们特别关注大海捞针的工作流程,它需要交互式搜索、分类和将非常大的异构数据集减少到可管理的、与任务相关的信息子集。我们断言,旨在促进模式发现、表征和分析的系统——即“洞察力”——必须提供一种有效的方法,从谷壳中挑选出针;当人们从数据中塑造意义时,简单的可压缩性度量提供了一种跟踪信息内容变化的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Information Theoretic Measures for Visual Analytics: The Silver Ticket?
In this paper, we argue that information theoretic measures may provide a robust, broadly applicable, repeatable metric to assess how a system enables people to reduce high-dimensional data into topically relevant subsets of information. Explosive growth in electronic data necessitates the development of systems that balance automation with human cognitive engagement to facilitate pattern discovery, analysis and characterization, variously described as "cognitive augmentation" or "insight generation." However, operationalizing the concept of insight in any measurable way remains a difficult challenge for visualization researchers. The "golden ticket" of insight evaluation would be a precise, generalizable, repeatable, and ecologically valid metric that indicates the relative utility of a system in heightening cognitive performance or facilitating insights. Unfortunately, the golden ticket does not yet exist. In its place, we are exploring information theoretic measures derived from Shannon's ideas about information and entropy as a starting point for precise, repeatable, and generalizable approaches for evaluating analytic tools. We are specifically concerned with needle-in-haystack workflows that require interactive search, classification, and reduction of very large heterogeneous datasets into manageable, task-relevant subsets of information. We assert that systems aimed at facilitating pattern discovery, characterization and analysis -- i.e., "insight" - must afford an efficient means of sorting the needles from the chaff; and simple compressibility measures provide a way of tracking changes in information content as people shape meaning from data.
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