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  1. Evolution and connectionism.Neil McNaughton - 1990 - Behavioral and Brain Sciences 13 (2):402-403.
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  • Value encoding of patterns and variable encoding of transformations?John C. Baird - 1986 - Behavioral and Brain Sciences 9 (1):91-92.
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  • How can the cerebellum match “error signal” and “error correction”?Michel Dufossé - 1996 - Behavioral and Brain Sciences 19 (3):442-442.
    This study examines how a Purkinje cell receives its appropriate olivary error signal during the learning of compound movements. We suggest that the Purkinje cell only reinforces those target pyramidal cells which already participate in the movement, subsequently reducing any repeated error signal, such as its own climbing fiber input, [simpson et al.; smith].
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  • Cerebellar theory out of control.Michael G. Paulin - 1996 - Behavioral and Brain Sciences 19 (3):470-471.
    The views of Houk et al., Smith, and Thach on the role of cerebellum in movement control differ substantially, but all three are flawed by the false reasoning that because information passes from the cerebellum to movements the cerebellum must be a movement controller, or a part of one. The divergent and less than compelling ideas expressed by these leading cerebellar theorists epitomize the fruitlessness of this paradigm, and signal the need for a change. [HOUK et al.; SMITH; THACH].
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  • Review article.R. J. Nelson - 1980 - Synthese 43 (3):433-451.
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  • From pixels to insights: Machine learning and deep learning for bioimage analysis.Mahta Jan, Allie Spangaro, Michelle Lenartowicz & Mojca Mattiazzi Usaj - 2024 - Bioessays 46 (2):2300114.
    Bioimage analysis plays a critical role in extracting information from biological images, enabling deeper insights into cellular structures and processes. The integration of machine learning and deep learning techniques has revolutionized the field, enabling the automated, reproducible, and accurate analysis of biological images. Here, we provide an overview of the history and principles of machine learning and deep learning in the context of bioimage analysis. We discuss the essential steps of the bioimage analysis workflow, emphasizing how machine learning and deep (...)
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  • Models of integration given multiple sources of information.Dominic W. Massaro & Daniel Friedman - 1990 - Psychological Review 97 (2):225-252.
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  • (1 other version)Naturalistic Approaches to Creativity.Dustin Stokes & Elliot Samuel Paul - 2016 - In Wesley Buckwalter & Justin Sytsma (eds.), Blackwell Companion to Experimental Philosophy. Malden, MA: Blackwell. pp. 318–333.
    This chapter offers a brief characterization of creativity, followed by a review of some of the reasons people have been skeptical about the possibility of explaining creativity. It surveys some of the recent work on creativity that is naturalistic in the sense that it presumes creativity is natural, as opposed to magical, occult, or supernatural, and is therefore amenable to scientific inquiry. The chapter divides into two categories. The broader category is empirical philosophy, which draws on empirical research while addressing (...)
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  • No more news from the cerebellum.Steven R. Vincent - 1996 - Behavioral and Brain Sciences 19 (3):490-492.
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  • We know a lot about the cerebellum, but do we know what motor learning is?Stephan P. Swinnen, Charles B. Walter & Natalia Dounskaia - 1996 - Behavioral and Brain Sciences 19 (3):474-475.
    In the behavioral literature on human movement, a distinction is made between the learning of parameters and the learning of new movement forms or topologies. Whereas the target articles by Thach, Smith, and Houk et al. provide evidence for cerebellar involvement in parametrization learning and adaptation, the evidence in favor of its involvement in the generation of new movement patterns is less straightforward. A case is made for focusing more attention on the latter issue in the future. This would directly (...)
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  • Abstract solutions versus neurobiologically plausible problems.Jeffrey Foss - 1986 - Behavioral and Brain Sciences 9 (1):95-96.
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  • What is computational intelligence and where is it going?Włodzisław Duch - 2007 - In Wlodzislaw Duch & Jacek Mandziuk (eds.), Challenges for Computational Intelligence. Springer. pp. 1--13.
    What is Computational Intelligence (CI) and what are its relations with Artificial Intelligence (AI)? A brief survey of the scope of CI journals and books with ``computational intelligence'' in their title shows that at present it is an umbrella for three core technologies (neural, fuzzy and evolutionary), their applications, and selected fashionable pattern recognition methods. At present CI has no comprehensive foundations and is more a bag of tricks than a solid branch of science. The change of focus from methods (...)
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  • A penalty‐logic simple‐transition model for structured sequences.Alan Fern - 2009 - In L. Magnani (ed.), computational intelligence. pp. 25--4.
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  • How Technológos "Responds" to What Used to Be Called "Images".Wolfgang Ernst - 2021 - Nordic Journal of Aesthetics 30 (61-62):84-93.
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  • Why not artificial consciousness or thought?Richard H. Schlagel - 1999 - Minds and Machines 9 (1):3-28.
    The purpose of this article is to show why consciousness and thought are not manifested in digital computers. Analyzing the rationale for claiming that the formal manipulation of physical symbols in Turing machines would emulate human thought, the article attempts to show why this proved false. This is because the reinterpretation of designation and meaning to accommodate physical symbol manipulation eliminated their crucial functions in human discourse. Words have denotations and intensional meanings because the brain transforms the physical stimuli received (...)
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  • Classification of the EMG's Recruitment Pattern Using Neural Networks.F. A. Papadopoulou, A. A. Michou, S. M. Panas & I. B. Mavromatis - 1998 - Journal of Intelligent Systems 8 (1-2):145-162.
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