Department of Psychology, Ben-Gurion University of the Negev, Beer Sheva 8410501, Israel.
Department of Cognitive and Brain Sciences, Ben-Gurion University of the Negev, Beer Sheva 8410501, Israel.
Proc Natl Acad Sci U S A. 2024 May 28;121(22):e2310979121. doi: 10.1073/pnas.2310979121. Epub 2024 May 23.
Humans have the highly adaptive ability to learn from others' memories. However, because memories are prone to errors, in order for others' memories to be a valuable source of information, we need to assess their veracity. Previous studies have shown that linguistic information conveyed in self-reported justifications can be used to train a machine-learner to distinguish true from false memories. But can humans also perform this task, and if so, do they do so in the same way the machine-learner does? Participants were presented with justifications corresponding to Hits and False Alarms and were asked to directly assess whether the witness's recognition was correct or incorrect. In addition, participants assessed justifications' recollective qualities: their vividness, specificity, and the degree of confidence they conveyed. Results show that human evaluators can discriminate Hits from False Alarms above chance levels, based on the justifications provided per item. Their performance was on par with the machine learner. Furthermore, through assessment of the perceived recollective qualities of justifications, participants were able to glean more information from the justifications than they used in their own direct decisions and than the machine learner did.
人类具有从他人记忆中学习的高度适应性能力。然而,由于记忆容易出错,为了使他人的记忆成为有价值的信息来源,我们需要评估其真实性。先前的研究表明,可以使用自我报告的理由中传达的语言信息来训练机器学习算法来区分真实记忆和虚假记忆。但是人类也可以执行此任务吗?如果可以,他们的做法是否与机器学习算法相同?参与者会看到与命中和误报对应的理由,并被要求直接评估证人的识别是否正确或错误。此外,参与者还评估了理由的回忆质量:生动性、特异性以及它们传达的信心程度。结果表明,人类评估者可以根据每个项目提供的理由,在高于机会水平的情况下区分命中和误报。他们的表现与机器学习算法相当。此外,通过评估理由的感知回忆质量,参与者能够从理由中获取比他们自己的直接决策更多的信息,并且比机器学习算法更多。