Distinctive Representation of Mispredicted and Unpredicted Prediction Errors in Human Electroencephalography
Hsu, Y.-F., Bars, S. L., Hämäläinen, J., & Waszak, F. (2015). Distinctive Representation of Mispredicted and Unpredicted Prediction Errors in Human Electroencephalography. Journal of Neuroscience, 35(43), 14653-14660. https://doi.org/10.1523/JNEUROSCI.2204-15.2015
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Journal of NeuroscienceDate
2015Discipline
PsykologiaMonitieteinen aivotutkimuskeskusHyvinvoinnin tutkimuksen yhteisöPsychologyCentre for Interdisciplinary Brain ResearchSchool of WellbeingCopyright
© 2015 the Authors. Published by the Society for Neuroscience. Published in this repository with the kind permission of the publisher.
The predictive coding model of perception proposes that neuronal responses are modulated by the amount of sensory input that the
internal prediction cannot account for (i.e., prediction error). However, there is little consensus on what constitutes nonpredicted
stimuli. Conceptually, whereas mispredicted stimuli may induce both prediction error generated by prediction that is not perceived and
prediction error generated by sensory input that is not anticipated, unpredicted stimuli involves no top-down, only bottom-up, propagation
of information in the system. Here, we examined the possibility that the processing of mispredicted and unpredicted stimuli are
dissociable at the neurophysiological level using human electroencephalography. We presented participants with sets of five tones in
which the frequency of the fifth tones was predicted, mispredicted, or unpredicted. Participants were required to press a key when they
detected a softer fifth tone to maintain their attention. We found that mispredicted and unpredicted stimuli are associated with different
amount of cortical activity, probably reflecting differences in prediction error. Moreover, relative to predicted stimuli, the mispredicted
prediction error manifested as neuronal enhancement and the unpredicted prediction error manifested as neuronal attenuation on the
N1 event-related potential component. These results highlight the importance of differentiating between the two nonpredicted stimuli in
theoretical work on predictive coding.
...
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