Sackler Centre for Consciousness Science, University of Sussex.
Psychol Methods. 2013 Dec;18(4):535-52. doi: 10.1037/a0033268. Epub 2013 Sep 30.
Analyzing metacognition, specifically knowledge of accuracy of internal perceptual, memorial, or other knowledge states, is vital for many strands of psychology, including determining the accuracy of feelings of knowing and discriminating conscious from unconscious cognition. Quantifying metacognitive sensitivity is however more challenging than quantifying basic stimulus sensitivity. Under popular signal-detection theory (SDT) models for stimulus classification tasks, approaches based on Type II receiver-operating characteristic (ROC) curves or Type II d-prime risk confounding metacognition with response biases in either the Type I (classification) or Type II (metacognitive) tasks. A new approach introduces meta-d': The Type I d-prime that would have led to the observed Type II data had the subject used all the Type I information. Here, we (a) further establish the inconsistency of the Type II d-prime and ROC approaches with new explicit analyses of the standard SDT model and (b) analyze, for the first time, the behavior of meta-d' under nontrivial scenarios, such as when metacognitive judgments utilize enhanced or degraded versions of the Type I evidence. Analytically, meta-d' values typically reflect the underlying model well and are stable under changes in decision criteria; however, in relatively extreme cases, meta-d' can become unstable. We explore bias and variance of in-sample measurements of meta-d' and supply MATLAB code for estimation in general cases. Our results support meta-d' as a useful measure of metacognition and provide rigorous methodology for its application. Our recommendations are useful for any researchers interested in assessing metacognitive accuracy.
分析元认知,特别是对内部感知、记忆或其他知识状态准确性的了解,对于心理学的许多分支都至关重要,包括确定知道感的准确性以及区分意识和无意识认知。然而,量化元认知敏感性比量化基本刺激敏感性更具挑战性。在流行的信号检测理论(SDT)用于刺激分类任务的模型下,基于二类接收器操作特性(ROC)曲线或二类 d-prime 的方法将元认知与第一类(分类)或第二类(元认知)任务中的反应偏差混淆。一种新方法引入了 meta-d':如果主体使用所有第一类信息,那么将导致观察到的第二类数据的第一类 d-prime。在这里,我们 (a) 通过对标准 SDT 模型进行新的明确分析,进一步确定了第二类 d-prime 和 ROC 方法的不一致性;(b) 首次分析了 meta-d'在非平凡场景下的行为,例如当元认知判断利用增强或降级的第一类证据时。从分析上看,meta-d' 值通常很好地反映了基础模型,并且在决策标准变化下稳定;然而,在相对极端的情况下,meta-d'可能会变得不稳定。我们探讨了 meta-d' 的样本内测量的偏差和方差,并提供了一般情况下的 MATLAB 代码进行估计。我们的结果支持 meta-d' 作为元认知的有用度量,并为其应用提供了严格的方法。我们的建议对于任何有兴趣评估元认知准确性的研究人员都很有用。