School of Psychology, Georgia Institute of Technology.
Psychol Rev. 2021 Jan;128(1):45-70. doi: 10.1037/rev0000249. Epub 2020 Jul 16.
Humans have the metacognitive ability to judge the accuracy of their own decisions via confidence ratings. A substantial body of research has demonstrated that human metacognition is fallible but it remains unclear how metacognitive inefficiency should be incorporated into a mechanistic model of confidence generation. Here we show that, contrary to what is typically assumed, metacognitive inefficiency depends on the level of confidence. We found that, across 5 different data sets and 4 different measures of metacognition, metacognitive ability decreased with higher confidence ratings. To understand the nature of this effect, we collected a large dataset of 20 subjects completing 2,800 trials each and providing confidence ratings on a continuous scale. The results demonstrated a robustly nonlinear zROC curve with downward curvature, despite a decades-old assumption of linearity. This pattern of results was reproduced by a new mechanistic model of confidence generation, which assumes the existence of lognormally distributed metacognitive noise. The model outperformed competing models either lacking metacognitive noise altogether or featuring Gaussian metacognitive noise. Further, the model could generate a measure of metacognitive ability which was independent of confidence levels. These findings establish an empirically validated model of confidence generation, have significant implications about measures of metacognitive ability, and begin to reveal the underlying nature of metacognitive inefficiency. (PsycInfo Database Record (c) 2020 APA, all rights reserved).
人类具有通过置信度评分来判断自身决策准确性的元认知能力。大量研究表明,人类的元认知存在缺陷,但目前仍不清楚如何将元认知效率低下纳入置信生成的机制模型中。在这里,我们表明,与通常的假设相反,元认知效率低下取决于置信度水平。我们发现,在 5 个不同的数据集和 4 种不同的元认知测量中,元认知能力随着置信度评分的提高而降低。为了理解这种效应的本质,我们收集了一个由 20 名受试者组成的大型数据集,每个受试者完成 2800 次试验,并在连续量表上提供置信度评分。结果表明,尽管存在几十年的线性假设,但稳健的非线性 zROC 曲线具有向下的曲率。通过一个新的置信生成机制模型重现了这种模式的结果,该模型假设存在对数正态分布的元认知噪声。该模型优于缺乏元认知噪声或具有高斯元认知噪声的竞争模型。此外,该模型可以生成一种与置信度水平无关的元认知能力度量。这些发现建立了一个经过实证验证的置信生成模型,对元认知能力的测量具有重要意义,并开始揭示元认知效率低下的潜在本质。(PsycInfo 数据库记录(c)2020 APA,保留所有权利)。