Learning hierarchical sequence representations across human cortex and hippocampus
Citations Over TimeTop 1% of 2021 papers
Abstract
Sensory input arrives in continuous sequences that humans experience as segmented units, e.g., words and events. The brain's ability to discover regularities is called statistical learning. Structure can be represented at multiple levels, including transitional probabilities, ordinal position, and identity of units. To investigate sequence encoding in cortex and hippocampus, we recorded from intracranial electrodes in human subjects as they were exposed to auditory and visual sequences containing temporal regularities. We find neural tracking of regularities within minutes, with characteristic profiles across brain areas. Early processing tracked lower-level features (e.g., syllables) and learned units (e.g., words), while later processing tracked only learned units. Learning rapidly shaped neural representations, with a gradient of complexity from early brain areas encoding transitional probability, to associative regions and hippocampus encoding ordinal position and identity of units. These findings indicate the existence of multiple, parallel computational systems for sequence learning across hierarchically organized cortico-hippocampal circuits.
Related Papers
- → N6-methyladenosine participates in mouse hippocampus neurodegeneration via PD-1/PD-L1 pathway(2023)7 cited
- → Bilateral injections of βA(25–35)+IBO into the hippocampus disrupts acquisition of spatial learning in the rat(1993)51 cited
- → Some thoughts on place cells and the hippocampus(1999)11 cited
- Effect of butylphthalide on cognition and the expressions of hippocampus of Aβ and NR2b in AD rats models(2010)
- INTERACTION OF CCK-8, β-EP AND DA ON SEIZURE IN RAT(2000)