Beta-Band Activity Is a Signature of Statistical Learning

Through statistical learning (SL), cognitive systems may discover the underlying regularities in the environment. Testing human adults ( = 35, 21 females), we document, in the context of a classical visual SL task, divergent rhythmic EEG activity in the interstimulus delay periods within patterns ve...

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Veröffentlicht in:The Journal of neuroscience 2020-09, Vol.40 (39), p.7523-7530
Hauptverfasser: Bogaerts, Louisa, Richter, Craig G, Landau, Ayelet N, Frost, Ram
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Sprache:eng
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Zusammenfassung:Through statistical learning (SL), cognitive systems may discover the underlying regularities in the environment. Testing human adults ( = 35, 21 females), we document, in the context of a classical visual SL task, divergent rhythmic EEG activity in the interstimulus delay periods within patterns versus between patterns (i.e., pattern transitions). Our findings reveal increased oscillatory activity in the beta band (∼20 Hz) at triplet transitions that indexes learning: it emerges with increased pattern repetitions; and importantly, it is highly correlated with behavioral learning outcomes. These findings hold the promise of converging on an online measure of learning regularities and provide important theoretical insights regarding the mechanisms of SL and prediction. Statistical learning has become a major theoretical construct in cognitive science, providing the primary means by which organisms learn about regularities in the environment. As such, it is a critical building block for basic and higher-order cognitive functions. Here we identify, for the first time, a spectral neural index in the time window before stimulus presentation, which evolves with increased pattern exposure, and is predictive of learning performance. The manifestation of learning that is revealed, not in stimulus processing but in the blank interval between stimuli, makes a direct link between the fields of statistical learning on the one hand and either prediction or consolidation on the other hand, suggesting a possible mechanistic account of visual statistical learning.
ISSN:0270-6474
1529-2401
DOI:10.1523/JNEUROSCI.0771-20.2020