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http://hdl.handle.net/10553/129008
Título: | Similarity-Based Interference in Sentence Comprehension in Aphasia: a Computational Evaluation of Two Models of Cue-Based Retrieval | Autores/as: | Lissón Hernández, Paula José Paape, Dario Pregla, Dorothea Burchert, Frank Stadie, Nicole Vasishth, Shravan |
Clasificación UNESCO: | 5701 Lingüística aplicada | Palabras clave: | Aphasia Cognitive modeling Computational modeling Cue-based retrieval Sentence comprehension |
Fecha de publicación: | 2023 | Publicación seriada: | Computational Brain and Behavior | Resumen: | Sentence comprehension requires the listener to link incoming words with short-term memory representations in order to build linguistic dependencies. The cue-based retrieval theory of sentence processing predicts that the retrieval of these memory representations is affected by similarity-based interference. We present the first large-scale computational evaluation of interference effects in two models of sentence processing — the activation-based model and a modification of the direct-access model — in individuals with aphasia (IWA) and control participants in German. The parameters of the models are linked to prominent theories of processing deficits in aphasia, and the models are tested against two linguistic constructions in German: pronoun resolution and relative clauses. The data come from a visual-world eye-tracking experiment combined with a sentence-picture matching task. The results show that both control participants and IWA are susceptible to retrieval interference, and that a combination of theoretical explanations (intermittent deficiencies, slow syntax, and resource reduction) can explain IWA’s deficits in sentence processing. Model comparisons reveal that both models have a similar predictive performance in pronoun resolution, but the activation-based model outperforms the direct-access model in relative clauses. | URI: | http://hdl.handle.net/10553/129008 | ISSN: | 2522-0861 | DOI: | 10.1007/s42113-023-00168-3 | Fuente: | Computational Brain and Behavior [2522-0861], nº 6, p. 473–502 |
Colección: | Artículos |
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