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Narrative event segmentation in the cortical reservoir.
- Source :
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PLoS Computational Biology . 10/7/2021, Vol. 17 Issue 10, p1-31. 31p. 2 Color Photographs, 2 Diagrams, 10 Graphs. - Publication Year :
- 2021
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Abstract
- Recent research has revealed that during continuous perception of movies or stories, humans display cortical activity patterns that reveal hierarchical segmentation of event structure. Thus, sensory areas like auditory cortex display high frequency segmentation related to the stimulus, while semantic areas like posterior middle cortex display a lower frequency segmentation related to transitions between events. These hierarchical levels of segmentation are associated with different time constants for processing. Likewise, when two groups of participants heard the same sentence in a narrative, preceded by different contexts, neural responses for the groups were initially different and then gradually aligned. The time constant for alignment followed the segmentation hierarchy: sensory cortices aligned most quickly, followed by mid-level regions, while some higher-order cortical regions took more than 10 seconds to align. These hierarchical segmentation phenomena can be considered in the context of processing related to comprehension. In a recently described model of discourse comprehension word meanings are modeled by a language model pre-trained on a billion word corpus. During discourse comprehension, word meanings are continuously integrated in a recurrent cortical network. The model demonstrates novel discourse and inference processing, in part because of two fundamental characteristics: real-world event semantics are represented in the word embeddings, and these are integrated in a reservoir network which has an inherent gradient of functional time constants due to the recurrent connections. Here we demonstrate how this model displays hierarchical narrative event segmentation properties beyond the embeddings alone, or their linear integration. The reservoir produces activation patterns that are segmented by a hidden Markov model (HMM) in a manner that is comparable to that of humans. Context construction displays a continuum of time constants across reservoir neuron subsets, while context forgetting has a fixed time constant across these subsets. Importantly, virtual areas formed by subgroups of reservoir neurons with faster time constants segmented with shorter events, while those with longer time constants preferred longer events. This neurocomputational recurrent neural network simulates narrative event processing as revealed by the fMRI event segmentation algorithm provides a novel explanation of the asymmetry in narrative forgetting and construction. The model extends the characterization of online integration processes in discourse to more extended narrative, and demonstrates how reservoir computing provides a useful model of cortical processing of narrative structure. Author summary: When we watch movies or listen to stories, our brains are led through a trajectory of activation whose structure reflects that of the event structure of the story. This takes place at multiple timescales across the brain, likely corresponding to different timescales of event representation. While this has been well described in human fMRI, the underlying computations that lead to these activation trajectories has not yet been fully characterized. The current research develops and explores a recurrent network "reservoir" model of cortical computation, whose natural internal dynamics help to provide an explanation of the trajectory of brain states that are observed in different cortical areas in humans. The model is exposed to narratives in the form of word embeddings for words in the narrative transcript. Neural activation in the model reveals event structure at multiple levels of temporal structure. This begins to provide insight into the computations underlying the event structure observed in the human brain during narrative processing. [ABSTRACT FROM AUTHOR]
- Subjects :
- *AUDITORY cortex
*HIDDEN Markov models
*RECURRENT neural networks
Subjects
Details
- Language :
- English
- ISSN :
- 1553734X
- Volume :
- 17
- Issue :
- 10
- Database :
- Academic Search Index
- Journal :
- PLoS Computational Biology
- Publication Type :
- Academic Journal
- Accession number :
- 152887216
- Full Text :
- https://doi.org/10.1371/journal.pcbi.1008993