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      Exploring cognitive individuality and the underlying creativity in statistical learning and phase entrainment

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          Abstract

          Statistical learning starts at an early age and is intimately linked to brain development and the emergence of individuality. Through such a long period of statistical learning, the brain updates and constructs statistical models, with the model's individuality changing based on the type and degree of stimulation received. However, the detailed mechanisms underlying this process are unknown. This paper argues three main points of statistical learning, including 1) cognitive individuality based on " reliability" of prediction, 2) the construction of information “ hierarchy” through chunking, and 3) the acquisition of “1-3Hz rhythm” that is essential for early language and music learning. We developed a Hierarchical Bayesian Statistical Learning (HBSL) model that takes into account both reliability and hierarchy, mimicking the statistical learning processes of the brain. Using this model, we conducted a simulation experiment to visualize the temporal dynamics of perception and production processes through statistical learning. By modulating the sensitivity to sound stimuli, we simulated three cognitive models with different reliability on bottom-up sensory stimuli relative to top-down prior prediction: hypo-sensitive, normal-sensitive, and hyper-sensitive models. We suggested that statistical learning plays a crucial role in the acquisition of 1-3 Hz rhythm. Moreover, a hyper-sensitive model quickly learned the sensory statistics but became fixated on their internal model, making it difficult to generate new information, whereas a hypo-sensitive model has lower learning efficiency but may be more likely to generate new information. Various individual characteristics may not necessarily confer an overall advantage over others, as there may be a trade-off between learning efficiency and the ease of generating new information. This study has the potential to shed light on the heterogeneous nature of statistical learning, as well as the paradoxical phenomenon in which individuals with certain cognitive traits that impede specific types of perceptual abilities exhibit superior performance in creative contexts.

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          The free-energy principle: a unified brain theory?

          A free-energy principle has been proposed recently that accounts for action, perception and learning. This Review looks at some key brain theories in the biological (for example, neural Darwinism) and physical (for example, information theory and optimal control theory) sciences from the free-energy perspective. Crucially, one key theme runs through each of these theories - optimization. Furthermore, if we look closely at what is optimized, the same quantity keeps emerging, namely value (expected reward, expected utility) or its complement, surprise (prediction error, expected cost). This is the quantity that is optimized under the free-energy principle, which suggests that several global brain theories might be unified within a free-energy framework.
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            Whatever next? Predictive brains, situated agents, and the future of cognitive science.

            Andy Clark (2013)
            Brains, it has recently been argued, are essentially prediction machines. They are bundles of cells that support perception and action by constantly attempting to match incoming sensory inputs with top-down expectations or predictions. This is achieved using a hierarchical generative model that aims to minimize prediction error within a bidirectional cascade of cortical processing. Such accounts offer a unifying model of perception and action, illuminate the functional role of attention, and may neatly capture the special contribution of cortical processing to adaptive success. This target article critically examines this "hierarchical prediction machine" approach, concluding that it offers the best clue yet to the shape of a unified science of mind and action. Sections 1 and 2 lay out the key elements and implications of the approach. Section 3 explores a variety of pitfalls and challenges, spanning the evidential, the methodological, and the more properly conceptual. The paper ends (sections 4 and 5) by asking how such approaches might impact our more general vision of mind, experience, and agency.
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              Autistic disturbances of affective contact

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                Author and article information

                Journal
                EXCLI J
                EXCLI J
                EXCLI J
                EXCLI Journal
                Leibniz Research Centre for Working Environment and Human Factors
                1611-2156
                04 August 2023
                2023
                : 22
                : 828-846
                Affiliations
                [1 ]Graduate School of Information Science and Technology, The University of Tokyo, Tokyo, Japan
                [2 ]Centre for Neuroscience in Education, University of Cambridge, Cambridge, UK
                [3 ]Center for Brain, Mind and KANSEI Sciences Research, Hiroshima University, Hiroshima, Japan
                Author notes
                *To whom correspondence should be addressed: Tatsuya Daikoku, Graduate School of Information Science and Technology, The University of Tokyo, 7-3-1 Hongo, Bunkyo-ku, Tokyo, Japan; Phone Number: 03-5841-1656, E-mail: daikoku.tatsuya@ 123456mail.u-tokyo.ac.jp
                Article
                2023-6135 Doc828
                10.17179/excli2023-6135
                10502202
                37720236
                36f0c659-fd86-4adf-bf30-8fad08e0a843
                Copyright © 2023 Daikoku et al.

                This is an Open Access article distributed under the terms of the Creative Commons Attribution Licence ( http://creativecommons.org/licenses/by/4.0/) You are free to copy, distribute and transmit the work, provided the original author and source are credited.

                History
                : 27 April 2023
                : 02 August 2023
                Categories
                Review Article

                phase entrainment,bayesian,chunking,hierarchy,music,rhythm
                phase entrainment, bayesian, chunking, hierarchy, music, rhythm

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