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  1. An Attractor Model of Lexical Conceptual Processing: Simulating Semantic Priming.George S. Cree, Ken McRae & Chris McNorgan - 1999 - Cognitive Science 23 (3):371-414.
    An attractor network was trained to compute from word form to semantic representations that were based on subject‐generated features. The model was driven largely by higher‐order semantic structure. The network simulated two recent experiments that employed items included in its training set (McRae and Boisvert, 1998). In Simulation 1, short stimulus onset asynchrony priming was demonstrated for semantically similar items. Simulation 2 reproduced subtle effects obtained by varying degree of similarity. Two predictions from the model were then tested on human (...)
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  • Decisions and the evolution of memory: Multiple systems, multiple functions.Stanley B. Klein, Leda Cosmides, John Tooby & Sarah Chance - 2002 - Psychological Review 109 (2):306-329.
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  • On the nature and scope of featural representations of word meaning.Ken McRae, Virginia R. de Sa & Mark S. Seidenberg - 1997 - Journal of Experimental Psychology 126 (2):99-130.
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  • The Bayesian reader: Explaining word recognition as an optimal Bayesian decision process.Dennis Norris - 2006 - Psychological Review 113 (2):327-357.
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  • Integrating the Automatic and the Controlled: Strategies in Semantic Priming in an Attractor Network With Latching Dynamics.Itamar Lerner, Shlomo Bentin & Oren Shriki - 2014 - Cognitive Science 38 (8):1562-1603.
    Semantic priming has long been recognized to reflect, along with automatic semantic mechanisms, the contribution of controlled strategies. However, previous theories of controlled priming were mostly qualitative, lacking common grounds with modern mathematical models of automatic priming based on neural networks. Recently, we introduced a novel attractor network model of automatic semantic priming with latching dynamics. Here, we extend this work to show how the same model can also account for important findings regarding controlled processes. Assuming the rate of semantic (...)
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  • Adding dense, weighted connections to WORDNET.Daniel Osherson - manuscript
    WORDNET, a ubiquitous tool for natural language processing, suffers from sparsity of connections between its component concepts (synsets). Through the use of human annotators, a subset of the connections between 1000 hand-chosen synsets was assigned a value of “evocation” representing how much the first concept brings to mind the second. These data, along with existing similarity measures, constitute the basis of a method for predicting evocation between previously unrated pairs.
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  • Models of memory.Jeroen Gw Raaijmakers & Richard M. Shiffrin - 2002 - In J. Wixted & H. Pashler (eds.), Stevens' Handbook of Experimental Psychology. Wiley.
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