导航不确定性:可视化集成数据和决策系统代理模型的挑战。

IF 1.4 4区 计算机科学 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Kristi Potter, Sam Molnar, J D Laurence-Chasen, Yuhan Duan, Julie Bessac, Han-Wei Shen, Theresa-Marie Rhyne
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引用次数: 0

摘要

不确定性可视化通过有效地传达系统内不同维度的不确定性,在将集成仿真数据转换为可操作的见解方面起着关键作用。基于多运行集成数据训练的人工智能驱动代理模型的出现提供了一个变革性的机会,用快速估计取代计算密集型模拟,使用户能够以前所未有的深度和交互性探索数据空间。然而,将集成数据和替代模型集成到决策工作流和工具中,为不确定性可视化带来了新的挑战。这些包括协调和清楚地传达与集成及其替代模型估计相关的独特不确定性,并利用这些近似来告知可操作的决策。这项工作在高维数据可视化的背景下探索了这些挑战,将离散数据集与其连续表示连接起来,并解决了支持输入和输出空间之间迭代导航的系统的复杂性。我们评估了不确定性可视化在促进直观、可操作的交互中的作用,并确定了推进这一计算模拟前沿的关键障碍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Navigating Uncertainty: Challenges in Visualizing Ensemble Data and Surrogate Models for Decision Systems.

Uncertainty visualization plays a critical role in transforming ensemble simulation data into actionable insights by effectively communicating various dimensions of uncertainty within a system. The emergence of artificial intelligence-driven surrogate models trained on multirun ensemble data offers a transformative opportunity to replace computationally intensive simulations with fast estimates, enabling users to explore data spaces with unprecedented depth and interactivity. However, integrating ensemble data and surrogate models into decision-making workflows and tools introduces novel challenges for uncertainty visualization. These include reconciling and clearly communicating the unique uncertainties associated with ensembles and their surrogate model estimates, and leveraging these approximations to inform actionable decisions. This work explores these challenges in the context of high-dimensional data visualization, bridging discrete datasets with their continuous representations and addressing the complexities of systems that support iterative navigation between input and output spaces. We evaluate the role of uncertainty visualization in fostering intuitive, actionable interactions and identify critical hurdles in advancing this frontier of computational simulation.

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来源期刊
IEEE Computer Graphics and Applications
IEEE Computer Graphics and Applications 工程技术-计算机:软件工程
CiteScore
3.20
自引率
5.60%
发文量
160
审稿时长
>12 weeks
期刊介绍: IEEE Computer Graphics and Applications (CG&A) bridges the theory and practice of computer graphics, visualization, virtual and augmented reality, and HCI. From specific algorithms to full system implementations, CG&A offers a unique combination of peer-reviewed feature articles and informal departments. Theme issues guest edited by leading researchers in their fields track the latest developments and trends in computer-generated graphical content, while tutorials and surveys provide a broad overview of interesting and timely topics. Regular departments further explore the core areas of graphics as well as extend into topics such as usability, education, history, and opinion. Each issue, the story of our cover focuses on creative applications of the technology by an artist or designer. Published six times a year, CG&A is indispensable reading for people working at the leading edge of computer-generated graphics technology and its applications in everything from business to the arts.
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