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个体数据对模型选择的诊断性:比较识别记忆的信号检测模型。

The diagnosticity of individual data for model selection: comparing signal-detection models of recognition memory.

机构信息

Department of Psychology, University of California, San Diego, 9500 Gilman Drive, La Jolla, CA 92093-0109, USA.

出版信息

Psychon Bull Rev. 2011 Aug;18(4):751-7. doi: 10.3758/s13423-011-0096-7.

Abstract

We tested whether the unequal-variance signal-detection (UVSD) and dual-process signal-detection (DPSD) models of recognition memory mimic the behavior of each other when applied to individual data. Replicating previous results, there was no mimicry for an analysis that fit each individual, summed the goodness-of-fit values over individuals, and compared the two sums (i.e., a single model selection). However, when the models were compared separately for each individual (i.e., multiple model selections), mimicry was substantial. To quantify the diagnosticity of the individual data, we used mimicry to calculate the probability of making a model selection error for each individual. For nondiagnostic data (high model selection error), the results were compatible with equal-variance signal-detection theory. Although neither model was justified in this situation, a forced-choice between the UVSD and DPSD models favored the DPSD model for being less flexible. For diagnostic data (low model selection error), the UVSD model was selected more often.

摘要

我们测试了不等方差信号检测(UVSD)和双加工信号检测(DPSD)模型在应用于个体数据时是否会相互模仿。复制先前的结果,当对每个个体进行拟合、对个体的拟合优度值求和并比较两个和(即单个模型选择)的分析时,没有模仿。然而,当分别对每个个体进行模型比较(即多个模型选择)时,模仿是显著的。为了量化个体数据的诊断性,我们使用模仿来计算每个个体模型选择错误的概率。对于非诊断数据(高模型选择错误),结果与等方差信号检测理论一致。虽然在这种情况下,两个模型都没有得到证明,但在 UVSD 和 DPSD 模型之间进行强制选择,DPSD 模型更不灵活。对于诊断数据(低模型选择错误),UVSD 模型被选择的频率更高。

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