Wardell Victoria, Jameson Taylyn, St Jacques Peggy L, Madan Christopher R, Palombo Daniela J
Department of Psychology, University of British Columbia, 2136 West Mall, Vancouver, BC, V6 T 1Z4, Canada.
Department of Psychology, University of Alberta, Edmonton, AB, Canada.
Behav Res Methods. 2025 May 6;57(6):163. doi: 10.3758/s13428-025-02690-7.
Memory is far from a stable representation of what we have encountered. Over time, we can forget, modify, and distort the details of our experiences. How autobiographical memory-the memories we have for our personal past-changes has important ramifications in both personal and public contexts. However, methodological challenges have hampered research in this area. Here, we introduce a standardized manual scoring procedure for systematically quantifying the consistency of narrative autobiographical memory recall and review advancements in natural language processing models that might be applied to examine changes in memory narratives. We compare the performance of manual and automated approaches on a large dataset of memories recalled at two time points placed approximately 2 months apart (N(memory pairs) = 1,026). We show that human and automated approaches are moderately correlated (r = .21-.46), though numerically human scorers provide conservative measures of consistency, while machines provide a liberal measure. We conclude by highlighting the strengths and limitations of both manual and automated approaches and recommend that human scoring be employed when the types of mnemonic details that are consistent over time and/or what drives inconsistencies in memory are of interest.
记忆远非对我们所经历之事的稳定呈现。随着时间的推移,我们会遗忘、修改并扭曲自身经历的细节。自传体记忆——我们对个人过去的记忆——如何变化,在个人和公共背景下都有着重要影响。然而,方法上的挑战阻碍了该领域的研究。在此,我们引入一种标准化的人工评分程序,用于系统地量化叙事性自传体记忆回忆的一致性,并回顾自然语言处理模型方面的进展,这些模型可能适用于检验记忆叙事的变化。我们在一个大约相隔两个月的两个时间点回忆的大量记忆数据集(N(记忆对)= 1026)上比较了人工和自动化方法的性能。我们表明,人工和自动化方法具有中等程度的相关性(r = 0.21 - 0.46),尽管在数值上人工评分者提供的是一致性的保守度量,而机器提供的是宽松度量。我们通过强调人工和自动化方法的优势与局限性来得出结论,并建议当关注随时间一致的记忆细节类型和/或记忆中不一致的驱动因素时,采用人工评分。