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MINERVA2中的真假识别:整合模糊痕迹理论与计算记忆模型。

True and false recognition in MINERVA2: Integrating fuzzy-trace theory and computational memory modeling.

作者信息

Chang Minyu, Johns Brendan T, Brainerd Charles J

机构信息

Department of Psychology, Trinity University.

Department of Psychology, McGill University.

出版信息

Psychol Rev. 2025 Jul;132(4):857-894. doi: 10.1037/rev0000541. Epub 2025 Feb 27.

Abstract

Previous research suggests that the MINERVA2 model can capture basic Deese/Roediger/McDermott (DRM) false recognition findings with either randomized representations or distributional semantic representations. In the current article, we extended this line of research by showing that MINERVA2 can accommodate not only basic DRM recognition findings but also the effects of various theory-driven manipulations. Importantly, we incorporated two assumptions of fuzzy-trace theory into MINERVA2: the verbatim-gist distinction and hierarchies of gist. To implement the verbatim-gist distinction, we represented local gist traces with distributional semantic vectors and verbatim traces with holographic word-form vectors. With separate representations incorporated, MINERVA2 successfully simulated a wide range of empirical effects in the DRM illusion, as well as remember/know and source judgments. To incorporate hierarchies of gist into the framework, we added an assumption that an item's storage quality depends on its semantic similarity to the preceding item. This accommodated the effect of global gist beyond that of local gist and solved the problem of storage independence in multitrace models of episodic memory. Our findings provided extensive evidence that MINERVA2 is a viable candidate for scalable modeling of the DRM illusion and strengthened the connection between computational modeling and substantive theories of false memory. (PsycInfo Database Record (c) 2025 APA, all rights reserved).

摘要

先前的研究表明,MINERVA2模型可以通过随机表征或分布语义表征来捕捉基本的迪斯/罗迪格/麦克德莫特(DRM)错误记忆发现。在当前文章中,我们扩展了这一研究方向,表明MINERVA2不仅可以适应基本的DRM记忆发现,还能适应各种理论驱动操作的影响。重要的是,我们将模糊痕迹理论的两个假设纳入了MINERVA2:逐字-主旨区分和主旨层次结构。为了实现逐字-主旨区分,我们用分布语义向量表示局部主旨痕迹,用全息词形向量表示逐字痕迹。通过纳入单独的表征,MINERVA2成功模拟了DRM错觉中的广泛实证效应,以及记忆/知晓和来源判断。为了将主旨层次结构纳入该框架,我们添加了一个假设,即一个项目的存储质量取决于它与前一个项目的语义相似性。这适应了全局主旨超出局部主旨的效应,并解决了情景记忆多痕迹模型中的存储独立性问题。我们的研究结果提供了大量证据,表明MINERVA2是DRM错觉可扩展建模的一个可行候选模型,并加强了计算建模与错误记忆实质理论之间的联系。(PsycInfo数据库记录(c)2025美国心理学会,保留所有权利)

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