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  1. How Does the Mind Render Streaming Experience as Events?Dare A. Baldwin & Jessica E. Kosie - 2021 - Topics in Cognitive Science 13 (1):79-105.
    Events—the experiences we think we are having and recall having had—are constructed; they are not what actually occurs. What occurs is ongoing dynamic, multidimensional, sensory flow, which is somehow transformed via psychological processes into structured, describable, memorable units of experience. But what is the nature of the redescription processes that fluently render dynamic sensory streams as event representations? How do such processes cope with the ubiquitous novelty and variability that characterize sensory experience? How are event‐rendering skills acquired and how do (...)
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  • Differential influence of first- vs. third-person visual perspectives on segmentation and memory of complex dynamic events.M. C. Allé, F. Danan, S. C. Kwok, V. Davies, C. Prudat & F. Berna - 2023 - Consciousness and Cognition 111 (C):103508.
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  • Culture influences how people divide continuous sensory experience into events.Khena M. Swallow & Qi Wang - 2020 - Cognition 205 (C):104450.
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  • Do doorways really matter: Investigating memory benefits of event segmentation in a virtual learning environment.Matthew R. Logie & David I. Donaldson - 2021 - Cognition 209:104578.
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  • Bayesian Surprise Predicts Human Event Segmentation in Story Listening.Manoj Kumar, Ariel Goldstein, Sebastian Michelmann, Jeffrey M. Zacks, Uri Hasson & Kenneth A. Norman - 2023 - Cognitive Science 47 (10):e13343.
    Event segmentation theory posits that people segment continuous experience into discrete events and that event boundaries occur when there are large transient increases in prediction error. Here, we set out to test this theory in the context of story listening, by using a deep learning language model (GPT‐2) to compute the predicted probability distribution of the next word, at each point in the story. For three stories, we used the probability distributions generated by GPT‐2 to compute the time series of (...)
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