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Complex Word Recognition Behaviour Emerges from the Richness of the Word Learning Environment
2016
Neurocomputational Models of Cognitive Development and Processing
Computational models can reflect the complexity of human behaviour by implementing multiple constraints within their architecture, and/or by taking into account the variety and richness of the environment to which the human is responding. We explore the second alternative in a model of word recognition that learns to map spoken words to visual and semantic representations of the words' concepts. Critically, we employ a phonological representation utilising coarse-coding of the auditory stream,
doi:10.1142/9789814699341_0007
fatcat:bwkue4cmsrfkpbbzsej5u76xcy