对视觉分析中缺失的系统考虑

Maoyuan Sun, Yue Ma, Yuanxin Wang, Tianyi Li, Jian Zhao, Yujun Liu, Ping-Shou Zhong
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摘要

在当今的大数据时代,数据驱动的决策已经成为一项常见的任务,从简单的选择,比如找到一条快速回家的路,到复杂的医疗决策。它通常由可视化分析支持。由于各种原因(例如,系统故障、网络中断、故意隐藏信息或偏见),用于数据语义的可视化分析涉及缺失(例如,数据丢失和不完整的分析),这会影响人类的决策。例如,丢失数据可能会使企业损失数百万美元,而未能识别关键证据可能会使无辜的人入狱。意识到失踪是避免此类灾难的关键。为了实现这一点,作为第一步,我们从两个方面考虑视觉分析的缺失:以数据为中心和以人为中心。前者强调与数据相关的三个类别的缺失:数据组成、数据关系和数据使用。后者侧重于人类感知缺失的三个层面:观察层面、推断层面和忽略层面。在此基础上,我们讨论了可视化在处理缺失方面可能发挥的作用,并对未来的研究机会进行了总结。
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Toward Systematic Considerations of Missingness in Visual Analytics
Data-driven decision making has been a common task in today's big data era, from simple choices such as finding a fast way to drive home, to complex decisions on medical treatment. It is often supported by visual analytics. For various reasons (e.g., system failure, interrupted network, intentional information hiding, or bias), visual analytics for sensemaking of data involves missingness (e.g., data loss and incomplete analysis), which impacts human decisions. For example, missing data can cost a business millions of dollars, and failing to recognize key evidence can put an innocent person in jail. Being aware of missingness is critical to avoid such catastrophes. To fulfill this, as an initial step, we consider missingness in visual analytics from two aspects: data-centric and human-centric. The former emphasizes missingness in three data-related categories: data composition, data relationship, and data usage. The latter focuses on the human-perceived missingness at three levels: observed-level, inferred-level, and ignored-level. Based on them, we discuss possible roles of visualizations for handling missingness, and conclude our discussion with future research opportunities.
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