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Hierarchical single- and dual-process models of recognition memory

机译:识别记忆的分层单过程和双过程模型

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Recognition memory is commonly modeled as either a single, continuous process within the theory of signal detection, or with two-process models such as Yonelinas' dual-process model. Previous attempts to determine which model provides a better account of the data have relied on fitting the models to data that are averaged over items. Because such averaging distorts conclusions, we develop and compare hierarchical versions of competing single and dual-process models that account for item variability. The dual-process model provides a superior account of a typical data set when models are compared with the deviance information criterion. Parameters of the dual-process model are highly correlated, however, suggesting that a single-process model may exist that can provide a better account of the data.
机译:识别记忆通常被建模为信号检测理论中的单个连续过程,或者采用两个过程模型(例如Yonelinas的双过程模型)进行建模。先前的确定哪种模型可以更好地说明数据的尝试依赖于将模型拟合为项目上平均的数据。由于这种平均结果会扭曲结论,因此我们开发并比较了解释项目可变性的竞争性单过程和双过程模型的分层版本。当将模型与偏差信息标准进行比较时,双过程模型可以很好地说明典型数据集。双进程模型的参数高度相关,但是,这表明可能存在一个单进程模型,可以更好地说明数据。

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