超越视觉分析:人工智能驱动的数据语义的人机合作

John E. Wenskovitch, C. Fallon, Kate Miller, Aritra Dasgupta
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引用次数: 2

摘要

发现预期,发现意外是视觉分析领域的基本原则。这句箴言意味着,人类利益相关者,如领域专家或数据分析师,可以利用可视化分析技术来寻找已知未知的答案,并在数据意义构建过程中发现未知的未知。我们认为,在人工智能驱动的自动化时代,我们需要重新调整人类和机器(例如,机器学习模型)作为队友的角色。我们认为,通过将人机团队作为一个利益相关者单位来实现,我们可以更好地实现两全其美:自动化透明度和人类推理效率。然而,这也增加了分析师和领域专家在执行比他们习惯的更需要认知的任务时的负担。在本文中,我们通过认知心理学的视角反思了人机团队中的互补角色,并将其映射到视觉分析社区中现有的和新兴的研究中。我们围绕人类代理的本质讨论开放的问题和挑战,并分析人机团队中的共同责任。
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Beyond Visual Analytics: Human-Machine Teaming for AI-Driven Data Sensemaking
Detect the expected, discover the unexpected was the founding principle of the field of visual analytics. This mantra implies that human stakeholders, like a domain expert or data analyst, could leverage visual analytics techniques to seek answers to known unknowns and discover unknown unknowns in the course of the data sense-making process. We argue that in the era of AI-driven automation, we need to recalibrate the roles of humans and machines (e.g., a machine learning model) as teammates. We posit that by realizing human-machine teams as a stakeholder unit, we can better achieve the best of both worlds: automation transparency and human reasoning efficacy. However, this also increases the burden on analysts and domain experts towards performing more cognitively demanding tasks than what they are used to. In this paper, we reflect on the complementary roles in a human-machine team through the lens of cognitive psychology and map them to existing and emerging research in the visual analytics community. We discuss open questions and challenges around the nature of human agency and analyze the shared responsibilities in human-machine teams.
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