论文标题
信任校准是知识产生不确定性演变的函数:一项调查
Trust Calibration as a Function of the Evolution of Uncertainty in Knowledge Generation: A Survey
论文作者
论文摘要
用户信任是设计强大的视觉分析系统的关键考虑因素,尽管人类,机器和机器和数据源介绍了知识出现的画布,但可以指导用户可以合理地得出合理的结论。在研究的考虑之后出现了许多因素,这些因素引入了相当大的复杂性并加剧了我们对视觉分析系统中信任关系如何发展的理解,就像它们在智能社会技术系统中一样。然而,视觉分析系统的性质并不与简单的表亲完全相同,也不一定是同一类型的现象。无论如何,两个应用领域都呈现出对信任性需要的相同根本原因:不确定性和风险假设。此外,视觉分析系统甚至比(传统上)在处理过程中倾向于直接对人类的投入和方向封闭的智能系统的影响更大,它受到多种认知偏见的影响,这些偏见进一步加剧了对可能遭受用户信心并最终对系统信任的不确定性的计算。 在本文中,我们认为,通过提取信息和假设测试来考虑不确定性从数据源传播,必须了解用户对视觉分析系统的信任如何发展到其生命周期中,并且分析师选择可视化参数的选择可以使我们在不确定和认知偏见之间捕捉到属性的范围,以捕获属性的范围。解释。我们从视觉分析,人类认知理论和不确定性中对文献进行了广泛的横截面,并试图合成有用的观点。
User trust is a crucial consideration in designing robust visual analytics systems that can guide users to reasonably sound conclusions despite inevitable biases and other uncertainties introduced by the human, the machine, and the data sources which paint the canvas upon which knowledge emerges. A multitude of factors emerge upon studied consideration which introduce considerable complexity and exacerbate our understanding of how trust relationships evolve in visual analytics systems, much as they do in intelligent sociotechnical systems. A visual analytics system, however, does not by its nature provoke exactly the same phenomena as its simpler cousins, nor are the phenomena necessarily of the same exact kind. Regardless, both application domains present the same root causes from which the need for trustworthiness arises: Uncertainty and the assumption of risk. In addition, visual analytics systems, even more than the intelligent systems which (traditionally) tend to be closed to direct human input and direction during processing, are influenced by a multitude of cognitive biases that further exacerbate an accounting of the uncertainties that may afflict the user's confidence, and ultimately trust in the system. In this article we argue that accounting for the propagation of uncertainty from data sources all the way through extraction of information and hypothesis testing is necessary to understand how user trust in a visual analytics system evolves over its lifecycle, and that the analyst's selection of visualization parameters affords us a simple means to capture the interactions between uncertainty and cognitive bias as a function of the attributes of the search tasks the analyst executes while evaluating explanations. We sample a broad cross-section of the literature from visual analytics, human cognitive theory, and uncertainty, and attempt to synthesize a useful perspective.