Assessing the Sensitivity of EEG-Based Frequency-Tagging as a Metric for Statistical Learning.

IF 3.6 Q1 LINGUISTICS
Danna Pinto, Anat Prior, Elana Zion Golumbic
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引用次数: 9

Abstract

Statistical learning (SL) is hypothesized to play an important role in language development. However, the measures typically used to assess SL, particularly at the level of individual participants, are largely indirect and have low sensitivity. Recently, a neural metric based on frequency-tagging has been proposed as an alternative measure for studying SL. We tested the sensitivity of frequency-tagging measures for studying SL in individual participants in an artificial language paradigm, using non-invasive electroencephalograph (EEG) recordings of neural activity in humans. Importantly, we used carefully constructed controls to address potential acoustic confounds of the frequency-tagging approach, and compared the sensitivity of EEG-based metrics to both explicit and implicit behavioral tests of SL. Group-level results confirm that frequency-tagging can provide a robust indication of SL for an artificial language, above and beyond potential acoustic confounds. However, this metric had very low sensitivity at the level of individual participants, with significant effects found only in 30% of participants. Comparison of the neural metric to previously established behavioral measures for assessing SL showed a significant yet weak correspondence with performance on an implicit task, which was above-chance in 70% of participants, but no correspondence with the more common explicit 2-alternative forced-choice task, where performance did not exceed chance-level. Given the proposed ubiquitous nature of SL, our results highlight some of the operational and methodological challenges of obtaining robust metrics for assessing SL, as well as the potential confounds that should be taken into account when using the frequency-tagging approach in EEG studies.

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评估基于脑电图的频率标记作为统计学习度量的敏感性。
统计学习被认为在语言发展中起着重要的作用。然而,通常用于评估SL的措施,特别是在个体参与者的水平上,很大程度上是间接的,灵敏度低。最近,一种基于频率标记的神经度量被提出作为研究SL的替代度量。我们使用无创脑电图(EEG)记录人类神经活动,测试了频率标记度量在人工语言范式下研究个体参与者SL的敏感性。重要的是,我们使用了精心构建的控制来解决频率标记方法的潜在声学混淆,并比较了基于脑电图的指标对显式和隐式语言行为测试的敏感性。群体水平的结果证实,频率标记可以为人工语言提供强大的语言指示,超越潜在的声学混淆。然而,该指标在个体参与者水平上的敏感性非常低,仅在30%的参与者中发现显著影响。将神经度量与先前建立的用于评估SL的行为度量进行比较,发现神经度量与内隐任务的表现有显著但微弱的对应关系,在70%的参与者中,内隐任务的表现高于机会水平,但与更常见的显性2选项强迫选择任务没有对应关系,后者的表现不超过机会水平。考虑到SL的普遍特性,我们的研究结果强调了获得评估SL的稳健指标的一些操作和方法上的挑战,以及在脑电图研究中使用频率标记方法时应考虑的潜在混淆。
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来源期刊
Neurobiology of Language
Neurobiology of Language Social Sciences-Linguistics and Language
CiteScore
5.90
自引率
6.20%
发文量
32
审稿时长
17 weeks
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