利用二元混合物的定点特性区分识别记忆模型

IF 2.2 4区 心理学 Q2 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Journal of Mathematical Psychology Pub Date : 2024-11-12 DOI:10.1016/j.jmp.2024.102889
F. Gregory Ashby
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引用次数: 0

摘要

各种不同的识别记忆模型做出了不同的心理假设,但却对新旧识别记忆实验中的 ROC 曲线做出了相似的预测。有些模型假定识别反应是由一个统一的过程产生的,而另一些模型则假定它们是两种质量上不同的反应的二元混合物。本研究表明,尽管二元混合物模型的 ROC 预测结果相似,但它们却做出了一些单元模型无法做出的惊人预测。具体来说,在任何实验中,如果混合物的概率发生变化,而各成分的分布不发生变化,那么二元混合物模型就会预测所有反应时间概率密度函数必须在同一时间点相交(如果它们相交的话)。同样,这些模型也都预测,如果 ROC 曲线相交,那么它们也必须相交于同一时间点。
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On using the fixed-point property of binary mixtures to discriminate among models of recognition memory
A variety of different recognition-memory models make different psychological assumptions, but similar predictions about ROC curves in old–new recognition-memory experiments. Some models assume that recognition responses are produced by a unitary process and other models assume they are a binary mixture of two qualitatively different types of responses. This note shows that despite their similar ROC predictions, the binary-mixture models make some striking predictions that the unitary models do not make. Specifically, in any experiment that includes conditions in which the mixture probability varies but the component distributions do not, the binary-mixture models predict that all response time probability density functions must intersect at the same time point (if they intersect at all). Similarly, they also all predict that if the ROC curves intersect, they must also all intersect at the same point.
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来源期刊
Journal of Mathematical Psychology
Journal of Mathematical Psychology 医学-数学跨学科应用
CiteScore
3.70
自引率
11.10%
发文量
37
审稿时长
20.2 weeks
期刊介绍: The Journal of Mathematical Psychology includes articles, monographs and reviews, notes and commentaries, and book reviews in all areas of mathematical psychology. Empirical and theoretical contributions are equally welcome. Areas of special interest include, but are not limited to, fundamental measurement and psychological process models, such as those based upon neural network or information processing concepts. A partial listing of substantive areas covered include sensation and perception, psychophysics, learning and memory, problem solving, judgment and decision-making, and motivation. The Journal of Mathematical Psychology is affiliated with the Society for Mathematical Psychology. Research Areas include: • Models for sensation and perception, learning, memory and thinking • Fundamental measurement and scaling • Decision making • Neural modeling and networks • Psychophysics and signal detection • Neuropsychological theories • Psycholinguistics • Motivational dynamics • Animal behavior • Psychometric theory
期刊最新文献
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