利用检索随因理解记忆整合和推理。

IF 2.2 3区 心理学 Q2 PSYCHOLOGY, EXPERIMENTAL
Wangjing Yu, Katherine D Duncan, Margaret L Schlichting
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引用次数: 0

摘要

过去的研究对人们如何利用记忆做出新的推断得出了不同的见解。虽然一些研究表明,在编码过程中可以将记忆组合起来,以存储从未经历过的推理关联,但另一些研究则强调了一种基于检索的机制,在这种机制中,独立的、高质量的记忆在需要推理时被重新组合。我们假设,在调和这些看似不同的发现时,可能需要考虑重要的个体差异。我们开始通过测量人们记忆回忆行为中的偶然性来量化这些差异。在实验1中,我们首先使用模拟和来自已知会产生依赖性的任务的数据比较了三种内存偶然性指标的性能。在此过程中,我们开发了一种校正方法来消除与一般记忆性能相关的偏差,以隔离记忆的表征结构,并且我们选择了最高保真度的选项-校正依赖性-用于后续分析。实验2测试了我们选择的度量标准的敏感性:我们操纵了不同经历之间的相似性,以促进一半记忆的整合。在高相似性条件下,我们发现了可靠的回忆依赖关系。最后,在实验3中,我们使用记忆依赖性来揭示探索性分析中推理方法的个体差异:“分离者”依靠高保真的个人记忆进行快速推理,“整合者”比“分离者”更快地进行推理,但他们的判断并不通过回忆组成经验细节来加快。总之,这些发现强调了在描述基于记忆的推理机制时考虑记忆表征的个体差异的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using retrieval contingencies to understand memory integration and inference.

Past work has yielded mixed insights into how people draw upon their memories to make new inferences. While some studies have shown memories can be combined during encoding to store never-experienced, inferential associations, others have emphasized a retrieval-based mechanism in which separate, high-quality memories are recombined as inferences are needed. We hypothesized that there might be important individual differences to consider when reconciling these seemingly disparate findings. We set out to quantify these differences by measuring contingencies in people's memory recall behaviour. In Experiment 1, we first compared the performance of three memory contingency metrics using simulations and data from a task known to induce dependency. In doing so, we developed a correction to remove biases associated with general memory performance to isolate the representational structure of memories, and we selected the highest-fidelity option - corrected dependency - for subsequent analyses. Experiment 2 tested the sensitivity of our chosen metric: We manipulated the similarity across experiences to encourage integration for half of the memories. Consistent with prior work, we found reliable recall dependency in the high similarity condition. Finally, in Experiment 3, we used memory dependencies to reveal individual differences in inference approaches in exploratory analyses: While "separators" relied upon high-fidelity individual memories to make speeded inferences, "integrators" drew inferences faster than separators, but their judgements were not sped by recalling constituent experience details. Together, these findings highlight the importance of considering individual differences in memory representations when characterizing the mechanisms underlying memory-based inference.

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来源期刊
Memory & Cognition
Memory & Cognition PSYCHOLOGY, EXPERIMENTAL-
CiteScore
4.40
自引率
8.30%
发文量
112
期刊介绍: Memory & Cognition covers human memory and learning, conceptual processes, psycholinguistics, problem solving, thinking, decision making, and skilled performance, including relevant work in the areas of computer simulation, information processing, mathematical psychology, developmental psychology, and experimental social psychology.
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