School of Information, University of Michigan, Ann Arbor, 48109, USA.
Robotics Department, University of Michigan, Ann Arbor, 48109, USA.
Sci Rep. 2023 Jun 19;13(1):9877. doi: 10.1038/s41598-023-37032-0.
Nothing is perfect and robots can make as many mistakes as any human, which can lead to a decrease in trust in them. However, it is possible, for robots to repair a human's trust in them after they have made mistakes through various trust repair strategies such as apologies, denials, and promises. Presently, the efficacy of these trust repairs in the human-robot interaction literature has been mixed. One reason for this might be that humans have different perceptions of a robot's mind. For example, some repairs may be more effective when humans believe that robots are capable of experiencing emotion. Likewise, other repairs might be more effective when humans believe robots possess intentionality. A key element that determines these beliefs is mind perception. Therefore understanding how mind perception impacts trust repair may be vital to understanding trust repair in human-robot interaction. To investigate this, we conducted a study involving 400 participants recruited via Amazon Mechanical Turk to determine whether mind perception influenced the effectiveness of three distinct repair strategies. The study employed an online platform where the robot and participant worked in a warehouse to pick and load 10 boxes. The robot made three mistakes over the course of the task and employed either a promise, denial, or apology after each mistake. Participants then rated their trust in the robot before and after it made the mistake. Results of this study indicated that overall, individual differences in mind perception are vital considerations when seeking to implement effective apologies and denials between humans and robots.
没有什么是完美的,机器人和人类一样可能会犯很多错误,这可能会导致人们对它们的信任度降低。然而,机器人可以通过各种信任修复策略,如道歉、否认和承诺,在犯错后修复人类对它们的信任。目前,这些信任修复策略在人机交互文献中的效果参差不齐。造成这种情况的一个原因可能是人类对机器人的思维有不同的看法。例如,当人类认为机器人能够体验情感时,某些修复可能会更有效。同样,当人类认为机器人具有意向性时,其他修复可能会更有效。决定这些信念的一个关键因素是心理感知。因此,了解心理感知如何影响信任修复可能对理解人机交互中的信任修复至关重要。为了研究这一点,我们进行了一项涉及 400 名参与者的研究,这些参与者是通过亚马逊 Mechanical Turk 招募的,目的是确定心理感知是否会影响三种不同修复策略的有效性。该研究采用了一个在线平台,机器人和参与者在仓库中一起完成了 10 个箱子的挑选和装货任务。在任务过程中,机器人犯了三个错误,在每个错误之后,它分别使用了承诺、否认或道歉。然后,参与者在机器人犯错误前后对他们对机器人的信任度进行了评价。这项研究的结果表明,总体而言,在人类和机器人之间实施有效的道歉和否认时,心理感知的个体差异是至关重要的考虑因素。