A Data-Acquisition Model for Learning and Cognitive Development and Its Implications for Autism

Source: Cornell University

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A data-driven model of learning is proposed, where a network of nodes and links is constructed that represents what has been heard and observed. Autism is viewed as the consequence of a disorder in the data-acquisition component of the model - essentially, it is the result of getting an "Inappropriate" distribution of data. The inappropriate data distribution leads to problems in data segmentation, which, in turn leads to a poor network representation. It is shown how the model, given inappropriate data distributions, can reproduce the main cognitive deficits associated with autism, including weak central coherence, impaired theory of mind, and executive dysfunction.
Format:PDF Size:377.70
Date:Sep 2007