Suppr超能文献

记忆的嵌入式计算框架:表征在真实和错误回忆预测中的关键作用。

An embedded computational framework of memory: The critical role of representations in veridical and false recall predictions.

作者信息

Guitard Dominic, Saint-Aubin Jean, Reid J Nick, Jamieson Randall K

机构信息

School of Psychology, Cardiff University, Tower Building, 70 Park Place, Cardiff, CF10 3AT, UK.

Université de Moncton, Moncton, NB, Canada.

出版信息

Psychon Bull Rev. 2025 Apr 11. doi: 10.3758/s13423-025-02669-7.

Abstract

Human memory is reconstructive and thus fundamentally imperfect. One of its critical flaws is false recall-the erroneous recollection of unstudied items. Despite its significant implications, false recall poses a challenge for existing computational models of serial recall, which struggle to provide item-specific predictions. Across six experiments, each involving 100 young adults, we address this issue using the Embedded Computational Framework of Memory (eCFM) that integrates existing accounts of semantic and episodic memory. While the framework provides a comprehensive account of memory processing, its innovation lies in the inclusion of a comprehensive lexicon of word knowledge derived from distributional semantic models. By integrating a lexicon that captures orthographic, phonological, and semantic relationships within an episodic memory model, the eCFM successfully accounts for patterns of veridical serial recall (e.g., proportion correct, intralist errors, omissions) while also capturing false recall (e.g., extralist errors including both critical lures and non-critical lures). We demonstrate the model's capabilities through simulations applied to six experiments, with lists of words (Experiments 1A, 1B, 2A, and 2B) and non-words (Experiments 3A and 3B) that are either related or unrelated semantically (Experiments 1A and 1B), phonologically (Experiments 2A and 2B), or orthographically (Experiments 3A and 3B). This approach fills a computational gap in modelling serial recall and underscores the importance of integrating traditionally separate areas of semantic and episodic memory to provide more precise predictions and holistic memory models.

摘要

人类记忆具有重构性,因此从根本上来说是不完美的。其关键缺陷之一是错误回忆——对未学习项目的错误记忆。尽管错误回忆具有重大影响,但它对现有的系列回忆计算模型构成了挑战,这些模型难以提供特定项目的预测。在六个实验中,每个实验都涉及100名年轻人,我们使用记忆的嵌入式计算框架(eCFM)来解决这个问题,该框架整合了现有的语义记忆和情景记忆理论。虽然该框架对记忆处理提供了全面的解释,但其创新之处在于纳入了从分布语义模型中衍生出来的全面的词汇知识词典。通过在情景记忆模型中整合一个捕捉正字法、语音和语义关系的词典,eCFM成功地解释了真实系列回忆的模式(例如,正确比例、列表内错误、遗漏),同时也捕捉到了错误回忆(例如,列表外错误,包括关键诱饵和非关键诱饵)。我们通过应用于六个实验的模拟展示了该模型的能力,实验中的单词列表(实验1A、1B、2A和2B)和非单词(实验3A和3B)在语义(实验1A和1B)、语音(实验2A和2B)或正字法(实验3A和3B)上要么相关要么不相关。这种方法填补了系列回忆建模中的计算空白,并强调了整合传统上分开的语义记忆和情景记忆领域以提供更精确预测和整体记忆模型的重要性。

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验