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  1. Computer models solving intelligence test problems: Progress and implications.José Hernández-Orallo, Fernando Martínez-Plumed, Ute Schmid, Michael Siebers & David L. Dowe - 2016 - Artificial Intelligence 230 (C):74-107.
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  • Cognitive computing and proposed approaches to conecptual organization of case law knowledge bases: a proposed model for information preparation, indexing, and analysis.Amie Taal, James A. Sherer & Kerri-Ann Bent - 2016 - Artificial Intelligence and Law 24 (4):347-370.
    Carole Hafner’s scholarship on the conceptual organization of case law knowledge bases was an original approach to distilling a library’s worth of cases into a manageable subset that any given legal researcher could review. Her approach applied concept indexation and concept search based on an annotation model of three interacting components combined with a system of expert legal reasoning to aid in the retrieval of pertinent case law. Despite the clear value this tripartite approach would afford to researchers in search (...)
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  • Exploring the brains of Baduk (Go) experts: gray matter morphometry, resting-state functional connectivity, and graph theoretical analysis.Wi Hoon Jung, Sung Nyun Kim, Tae Young Lee, Joon Hwan Jang, Chi-Hoon Choi, Do-Hyung Kang & Jun Soo Kwon - 2013 - Frontiers in Human Neuroscience 7.
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  • Integrating reinforcement learning, bidding and genetic algorithms.Ron Sun - unknown
    This paper presents a GA-based multi-agent reinforce- ment learning bidding approach (GMARLB) for perform- ing multi-agent reinforcement learning. GMARLB inte- grates reinforcement learning, bidding and genetic algo- rithms. The general idea of our multi-agent systems is as follows: There are a number of individual agents in a team, each agent of the team has two modules: Q module and CQ module. Each agent can select actions to be performed at each step, which are done by the Q module. While the (...)
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  • Intuitive Expertise and Perceptual Templates.Michael Harré & Allan Snyder - 2012 - Minds and Machines 22 (3):167-182.
    We provide the first demonstration of an artificial neural network encoding the perceptual templates that form an important component of the high level strategic understanding developed by experts. Experts have a highly refined sense of knowing where to look, what information is important and what information to ignore. The conclusions these experts reach are of a higher quality and typically made in a shorter amount of time than those of non-experts. Understanding the manifestation of such abilities in terms of both (...)
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  • Limited lookahead in imperfect-information games.Christian Kroer & Tuomas Sandholm - 2020 - Artificial Intelligence 283 (C):103218.
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  • Monte-Carlo tree search and rapid action value estimation in computer Go.Sylvain Gelly & David Silver - 2011 - Artificial Intelligence 175 (11):1856-1875.
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  • Metacognition in computation: A selected research review.Michael T. Cox - 2005 - Artificial Intelligence 169 (2):104-141.
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