Department of Psychology, University of Waterloo, Waterloo, Canada.
Department of Applied Mathematics, University of Waterloo, Waterloo, Canada.
Memory. 2022 Nov;30(10):1267-1287. doi: 10.1080/09658211.2022.2104317. Epub 2022 Aug 10.
Although research on autobiographical memory (AM) continues to grow, there remain few methods to analyze AM content. Past approaches are typically manual, and prohibitively time- and labour-intensive. These methodological limitations are concerning because content may provide insights into the nature and functions of AM. In particular, analyzing content in recurrent involuntary autobiographical memories (IAMs; those that spring to mind unintentionally and repetitively) could resolve controversies about whether these memories typically involve mundane or distressing events. Here, we present computational methods that can analyze content in thousands of participants' AMs, without needing to hand-code each memory. A sample of 6,187 undergraduates completed surveys about recurrent IAMs, resulting in 3,624 text descriptions. Using frequency analyses, we identified common (e.g., "time", "friend") and distinctive words in recurrent IAMs (e.g., "argument" as distinctive to negative recurrent IAMs). Using structural topic modelling, we identified coherent topics (e.g., "Negative past relationships", "Conversations", "Experiences with family members") within recurrent IAMs and found that topic use significantly differed depending on the valence of these memories. Computational methods allowed us to analyze large quantities of AM content with enhanced granularity and reproducibility. We present the means to enable future research on AM content at an unprecedented scope and scale.
尽管自传体记忆 (AM) 的研究不断发展,但分析 AM 内容的方法仍然很少。过去的方法通常是手动的,而且非常耗时和费力。这些方法上的限制令人担忧,因为内容可能提供了对 AM 的性质和功能的深入了解。特别是,分析反复出现的无意识自传体记忆 (IAM; 那些无意识地、反复出现的记忆) 的内容,可以解决关于这些记忆通常是否涉及平凡或令人痛苦的事件的争议。在这里,我们提出了可以分析数千名参与者的 AM 内容的计算方法,而无需手动为每个记忆进行编码。一组 6187 名本科生完成了关于反复出现的 IAMs 的调查,得出了 3624 个文本描述。使用频率分析,我们在反复出现的 IAMs 中识别出常见的(例如,“时间”,“朋友”)和独特的词(例如,“争论”是负面反复出现的 IAMs 的独特词)。使用结构主题建模,我们在反复出现的 IAMs 中识别出连贯的主题(例如,“过去负面的人际关系”,“对话”,“与家庭成员的经历”),并发现这些记忆的情绪显著影响了主题的使用。计算方法使我们能够以增强的粒度和可重复性分析大量的 AM 内容。我们提供了在前所未有的规模和范围内研究 AM 内容的手段。