Uncertainty-aware visual analytics: scope, opportunities, and challenges

被引:0
作者
Robin G. C. Maack
Gerik Scheuermann
Hans Hagen
Jose Tiberio Hernández Peñaloza
Christina Gillmann
机构
[1] University of Kaiserslautern,Computer Graphics and HCI Group
[2] Leipzig University,Image and Signal Processing Group
[3] Universidad de los Andes,IMAGINE Group
来源
The Visual Computer | 2023年 / 39卷
关键词
Visual analytics; Uncertainty analysis; Uncertainty-aware visualization;
D O I
暂无
中图分类号
学科分类号
摘要
In many applications, visual analytics (VA) has developed into a standard tool to ease data access and knowledge generation. VA describes a holistic cycle transforming data into hypothesis and visualization to generate insights that enhance the data. Unfortunately, many data sources used in the VA process are affected by uncertainty. In addition, the VA cycle itself can introduce uncertainty to the knowledge generation process but does not provide a mechanism to handle these sources of uncertainty. In this manuscript, we aim to provide an extended VA cycle that is capable of handling uncertainty by quantification, propagation, and visualization, defined as uncertainty-aware visual analytics (UAVA). Here, a recap of uncertainty definition and description is used as a starting point to insert novel components in the visual analytics cycle. These components assist in capturing uncertainty throughout the VA cycle. Further, different data types, hypothesis generation approaches, and uncertainty-aware visualization approaches are discussed that fit in the defined UAVA cycle. In addition, application scenarios that can be handled by such a cycle, examples, and a list of open challenges in the area of UAVA are provided.
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收藏
页码:6345 / 6366
页数:21
相关论文
共 176 条
  • [1] Belforte G(1987)Bounded measurement error estimates: their properties and their use for small sets of data Measurement 5 167-175
  • [2] Bona B(2018)Big data analytics in uncertainty quantification: application to structural diagnosis and prognosis ASCE-ASME J. Risk Uncertain. Eng. Syst. Part A Civ. Eng. 4 04018003-1429
  • [3] Cerone V(2019)Data aggregation processes: a survey, a taxonomy, and design guidelines Computing 101 1397-193
  • [4] Cai G(2015)A new algorithm for high-dimensional uncertainty quantification based on dimension-adaptive sparse grid approximation and reduced basis methods J. Comput. Phys. 298 176-1006
  • [5] Mahadevan S(2015)The interplay between uncertainty monitoring and working memory: Can metacognition become automatic? Mem. Cogn. 43 990-81573
  • [6] Cai S(2019)Visual analytics: a comprehensive overview IEEE Access 7 81555-98
  • [7] Gallina B(2019)Perceptual uncertainty PLoS Biol. 17 e3000430-15
  • [8] Nyström D(2018)An uncertainty-aware visual system for image pre-processing J. Imaging 4 109-831
  • [9] Seceleanu C(2021)Visualizing multimodal deep learning for lesion prediction IEEE Comput. Graph. Appl. 41 90-906
  • [10] Chen P(2021)Ten open challenges in medical visualization IEEE Comput. Graph. Appl. 41 7-117