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A Dynamic Associative Semantic Model for Natural Language Processing based on a Spreading Activation Network
Santiago, Chile November 16-November 18
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/SCCC.2000.890397XX International Conference of the Ch ...
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A. Bassi, Dept. de Ciencias de la Comput., Chile Univ., Santiago, Chile
This paper presents a semantic model based on well-known psycholinguistic theories of human memory. It is centered on a spreading activation network, but it departs from classical models by representing associations between structured units instead of atomic nodes. Network units have an activity level that evolves according to their expected contextual relevance. Spreading activation explains the predictive top-down effect of knowledge. It supports general heuristics which may be used as the first step of more elaborated methods. This model is suited to deal with the interaction between semantic and episodic memories, as well as many other practical issues regarding natural language processing, including the retroactive effect of semantics over perception and the operation in open-worlds.
Index Terms:
natural languages; semantic networks; dynamic associative semantic model; natural language processing; spreading activation network; psycholinguistic theories; human memory; expected contextual relevance; top-down effect; episodic memories; semantic memories; perception; open-worlds
Citation:
A. Bassi, "A Dynamic Associative Semantic Model for Natural Language Processing based on a Spreading Activation Network," sccc, pp.99, XX International Conference of the Chilean Computer Science Society (SCCC'00), 2000
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