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Structured Event Memory: A neuro-symbolic model of event cognition.

Nicholas Franklin, Kenneth A. Norman, Charan Ranganath, Jeffrey M. Zacks, Samuel J. Gershman

2020Psychological Review174 citationsDOI

Abstract

(SEM) model of event cognition, which accounts for human abilities in event segmentation, memory, and generalization. SEM is derived from a probabilistic generative model of event dynamics defined over structured symbolic scenes. By embedding symbolic scene representations in a vector space and parametrizing the scene dynamics in this continuous space, SEM combines the advantages of structured and neural network approaches to high-level cognition. Using probabilistic reasoning over this generative model, SEM can infer event boundaries, learn event schemata, and use event knowledge to reconstruct past experience. We show that SEM can scale up to high-dimensional input spaces, producing human-like event segmentation for naturalistic video data, and accounts for a wide array of memory phenomena. (PsycInfo Database Record (c) 2020 APA, all rights reserved).

Topics & Concepts

CognitionEvent-related potentialEvent (particle physics)Cognitive psychologyPsychologyCognitive scienceNeurosciencePhysicsQuantum mechanicsCognitive Science and Education Research
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