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  1. A Single-Boundary Accumulator Model of Response Times in an Addition Verification Task.Thomas J. Faulkenberry - 2017 - Frontiers in Psychology 8.
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  • A Computational Modeling Approach on Three‐Digit Number Processing.Stefan Huber, Korbinian Moeller, Hans-Christoph Nuerk & Klaus Willmes - 2013 - Topics in Cognitive Science 5 (2):317-334.
    Recent findings indicate that the constituting digits of multi-digit numbers are processed, decomposed into units, tens, and so on, rather than integrated into one entity. This is suggested by interfering effects of unit digit processing on two-digit number comparison. In the present study, we extended the computational model for two-digit number magnitude comparison of Moeller, Huber, Nuerk, and Willmes (2011a) to the case of three-digit number comparison (e.g., 371_826). In a second step, we evaluated how hundred-decade and hundred-unit compatibility effects (...)
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  • There’s a SNARC in the Size Congruity Task.Tina Weis, Steffen Theobald, Andreas Schmitt, Cees van Leeuwen & Thomas Lachmann - 2018 - Frontiers in Psychology 9.
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  • Intentional and automatic numerical processing as predictors of mathematical abilities in primary school children.Violeta Pina, Alejandro Castillo, Roi Cohen Kadosh & Luis J. Fuentes - 2015 - Frontiers in Psychology 6.
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  • Is there a generalized magnitude system in the brain? Behavioral, neuroimaging, and computational evidence.Filip Van Opstal & Tom Verguts - 2013 - Frontiers in Psychology 4.
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  • A human-like artificial intelligence for mathematics.Santiago Alonso-Diaz - 2024 - Mind and Society 23 (1):79-97.
    This paper provides a brief overview of findings in mathematical cognition and how a human-like AI in mathematics may look like. Then, it provides six reasons in favor of a human-like AI for mathematics: (1) human cognition, with all its limits, creates mathematics; (2) human mathematics is insightful, not merely deductive steps; (3) human cognition detects structure in the real world; (4) human cognition can tackle and detect complex problems; (5) human cognition is creative; (6) human cognition considers ethical issues. (...)
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