Publication:
Simulating Retrieval From A Highly Clustered Network: Implications For Spoken Word Recognition

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2011

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Network science describes how entities in complex systems interact, and argues that the structure of the network influences processing. Clustering coefficient, C one measure of network structure refers to the extent to which neighbors of a node are also neighbors of each other. Previous simulations suggest that networks with low C dissipate information (or disease) to a large portion of the network, whereas in networks with high C information (or disease) tends to be constrained to a smaller portion of the network (Newman, 2003). In the present simulation we examined how C influenced the spread of activation to a specific node, simulating retrieval of a specific lexical item in a phonological network. The results of the network simulation showed that words with lower C had higher activation values (indicating faster or more accurate retrieval from the lexicon) than words with higher C. These results suggest that a simple mechanism for lexical retrieval can account for the observations made in Chan and Vitevitch (2009), and have implications for diffusion dynamics in other fields.

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Frontiers Research Foundation, Po Box 110, Lausanne, 1015, Switzerland

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network science, simulation, clustering coefficient, mental lexicon, word recognition, ağ bilimi, simülasyon, kümeleme katsayısı, zihinsel sözlüğü, kelime tanıma

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