Hutchinson Jack, Strickland Luke, Farrell Simon, Loft Shayne
The University of Western Australia, Perth, WA, Australia.
Curtin University, Perth, WA, Australia.
Hum Factors. 2023 Dec;65(8):1596-1612. doi: 10.1177/00187208211062985. Epub 2022 Jan 3.
Examine (1) the extent to which humans can accurately estimate automation reliability and calibrate to changes in reliability, and how this is impacted by the recent accuracy of automation; and (2) factors that impact the acceptance of automated advice, including true automation reliability, reliability perception, and the difference between an operator's perception of automation reliability and perception of their own reliability.
Existing evidence suggests humans can adapt to changes in automation reliability but generally underestimate reliability. Cognitive science indicates that humans heavily weight evidence from more recent experiences.
Participants monitored the behavior of maritime vessels (contacts) in order to classify them, and then received advice from automation regarding classification. Participants were assigned to either an initially high (90%) or low (60%) automation reliability condition. After some time, reliability switched to 75% in both conditions.
Participants initially underestimated automation reliability. After the change in true reliability, estimates in both conditions moved towards the common true reliability, but did not reach it. There were recency effects, with lower future reliability estimates immediately following incorrect automation advice. With lower initial reliability, automation acceptance rates tracked true reliability more closely than perceived reliability. A positive difference between participant assessments of the reliability of automation and their own reliability predicted greater automation acceptance.
Humans underestimate the reliability of automation, and we have demonstrated several critical factors that impact the perception of automation reliability and automation use.
The findings have potential implications for training and adaptive human-automation teaming.
研究(1)人类能够在多大程度上准确估计自动化可靠性并根据可靠性变化进行校准,以及这如何受到自动化近期准确性的影响;(2)影响自动化建议接受度的因素,包括实际自动化可靠性、可靠性感知,以及操作员对自动化可靠性的感知与对自身可靠性的感知之间的差异。
现有证据表明人类能够适应自动化可靠性的变化,但通常会低估可靠性。认知科学表明,人类会高度重视近期经历的证据。
参与者监测海上船只(目标)的行为以便对其进行分类,然后从自动化系统获得关于分类的建议。参与者被分配到初始可靠性高(90%)或低(60%)的自动化条件。一段时间后,两种条件下的可靠性都切换到75%。
参与者最初低估了自动化可靠性。在实际可靠性发生变化后,两种条件下的估计都朝着共同的实际可靠性移动,但未达到该值。存在近期效应,在自动化建议错误后,未来可靠性估计值较低。初始可靠性较低时,自动化接受率与实际可靠性的跟踪程度比与感知可靠性的跟踪程度更紧密。参与者对自动化可靠性与其自身可靠性评估之间的正差异预示着更高的自动化接受度。
人类低估了自动化的可靠性,并且我们已经证明了几个影响自动化可靠性感知和自动化使用的关键因素。
这些发现对培训和适应性人机自动化协作具有潜在意义。