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首页> 外文期刊>Journal of memory and language >Understanding metacognitive confidence: Insights from judgment-of-learning justifications
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Understanding metacognitive confidence: Insights from judgment-of-learning justifications

机译:了解元认知信心:判断学习理由见解

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摘要

This study employed the delayed judgment-of-learning (JOL) paradigm to investigate the content of metacognitive judgments; after studying cue-target word-pairs, participants predicted their ability to remember targets on a future memory test (cued recognition in Experiments 1 and 2 and cued recall in Experiment 3). In Experiment 1 and the confidence JOL group of Experiment 3, participants used a commonly employed 6-point numeric confidence JOL scale (0-20-40-60-80-100%). In Experiment 2 and the binary JOL group of Experiment 3 participants first made a binary yes/no JOL prediction followed by a 3-point verbal confidence judgment (sure-maybe-guess). In all experiments, on a subset of trials, participants gave a written justification of why they gave that specific JOL response. We used natural language processing techniques (latent semantic analysis and word frequency [n-gram] analysis) to characterize the content of the written justifications and to capture what types of evidence evaluation uniquely separate one JOL response type from others. We also used a machine learning classification algorithm (support vector machine [SVM]) to quantify the extent to which any two JOL responses differed from each other. We found that: (i) participants can justify and explain their JOLs; (ii) these justifications reference cue familiarity and target accessibility and so are particularly consistent with the two-stage metacognitive model; and (iii) JOL confidence judgements do not correspond to yes/no responses in the manner typically assumed within the literature (i.e. 0-40% interpreted as no predictions). (C) 2017 Elsevier Inc. All rights reserved.
机译:本研究采用延迟判断(JOL)范式来调查元认知判决的内容;在研究CUE目标词对之后,参与者预测他们在未来的记忆测试中记住目标的能力(在实验1和2中的识别和在实验3中的召回召回)。在实验1和置信jol型实验3中,参与者使用常用的6点数字置信速度速度速度(0-20-40-60-80-100%)。在实验2和二进制JOL实验中3参与者首先制定了二元/没有JOL预测,然后是3点的口头置信度判断(肯定可能)。在所有实验中,在试验的子集上,参与者对他们给出了他们为什么提供了特定的JOL反应的理由。我们使用自然语言处理技术(潜在语义分析和字频率[n-GRAM]分析,以表征书面理由的内容,并捕获什么类型的证据评估,从其他人中独特地分离一个JOL响应类型。我们还使用了机器学习分类算法(支持向量机[SVM])来量化任何两个JOL响应彼此不同的程度。我们发现:(i)参与者可以证明并解释他们的jols; (ii)这些理由参考提示提示熟悉和目标可访问性,因此与两级元认知模型特别一致; (iii)JOL置信度判断不对应于通常在文献内的方式(即0-40%未解释的预测)的方式对应于是/否响应。 (c)2017年Elsevier Inc.保留所有权利。

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