van den Berg Ronald, Yoo Aspen H, Ma Wei Ji
Department of Psychology.
Center for Neural Science.
Psychol Rev. 2017 Mar;124(2):197-214. doi: 10.1037/rev0000060.
Although visual working memory (VWM) has been studied extensively, it is unknown how people form confidence judgments about their memories. Peirce (1878) speculated that Fechner's law-which states that sensation is proportional to the logarithm of stimulus intensity-might apply to confidence reports. Based on this idea, we hypothesize that humans map the precision of their VWM contents to a confidence rating through Fechner's law. We incorporate this hypothesis into the best available model of VWM encoding and fit it to data from a delayed-estimation experiment. The model provides an excellent account of human confidence rating distributions as well as the relation between performance and confidence. Moreover, the best-fitting mapping in a model with a highly flexible mapping closely resembles the logarithmic mapping, suggesting that no alternative mapping exists that accounts better for the data than Fechner's law. We propose a neural implementation of the model and find that this model also fits the behavioral data well. Furthermore, we find that jointly fitting memory errors and confidence ratings boosts the power to distinguish previously proposed VWM encoding models by a factor of 5.99 compared to fitting only memory errors. Finally, we show that Fechner's law also accounts for metacognitive judgments in a word recognition memory task, which is a first indication that it may be a general law in metacognition. Our work presents the first model to jointly account for errors and confidence ratings in VWM and could lay the groundwork for understanding the computational mechanisms of metacognition. (PsycINFO Database Record
尽管视觉工作记忆(VWM)已得到广泛研究,但人们如何对自己的记忆形成信心判断仍不明确。皮尔斯(1878年)推测,费希纳定律(该定律指出感觉与刺激强度的对数成正比)可能适用于信心报告。基于这一想法,我们假设人类通过费希纳定律将其VWM内容的精度映射到信心评级。我们将这一假设纳入现有的最佳VWM编码模型,并将其与延迟估计实验的数据进行拟合。该模型对人类信心评级分布以及表现与信心之间的关系给出了出色的解释。此外,在具有高度灵活映射的模型中,最佳拟合映射与对数映射非常相似,这表明不存在比费希纳定律更能解释数据的替代映射。我们提出了该模型的神经实现方式,并发现此模型也能很好地拟合行为数据。此外,我们发现与仅拟合记忆错误相比,联合拟合记忆错误和信心评级可将区分先前提出的VWM编码模型的能力提高5.99倍。最后,我们表明费希纳定律也适用于单词识别记忆任务中的元认知判断,这首次表明它可能是元认知中的一条普遍定律。我们的工作提出了首个联合解释VWM中的错误和信心评级的模型,并可能为理解元认知的计算机制奠定基础。(《心理学文摘数据库记录》