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Archivio digitale delle tesi discusse presso l’Università di Pisa

Tesi etd-07112018-144708


Tipo di tesi
Tesi di dottorato di ricerca
Autore
CHERSONI, EMMANUELE
URN
etd-07112018-144708
Titolo
Explaining Complexity in Human Language Processing: A Distributional Semantic Model
Settore scientifico disciplinare
L-LIN/01
Corso di studi
FILOLOGIA, LETTERATURA E LINGUISTICA
Relatori
tutor Dott. Blache, Philippe
correlatore Prof. Lenci, Alessandro
Parole chiave
  • sentence comprehension
  • semantic memory
  • semantic complexity
  • N400
  • distributional semantics
  • computational psycholinguistics
  • thematic fit
  • unification
Data inizio appello
22/07/2018
Consultabilità
Completa
Riassunto
The present work deals with the problem of the semantic complexity in natural language, proposing an hypothesis based on some features of natural language sentences that determine their difficulty for human understanding.
We aim at introducing a general framework for semantic complexity, in which the processing difficulty depends on the interaction between two components: a Memory component, which is responsible for the storage of corpus-extracted event representations, and a Unification component, which is responsible for combining the units stored in Memory into more complex structures. We propose that semantic complexity depends on the difficulty of building a semantic representation of the event or the situation conveyed by a sentence, that can be either retrieved directly from the semantic memory or built dynamically by solving the constraints included in the stored representations.
In order to test our intuitions, we built a Distributional Semantic Model to compute a compositional cost for the sentence unification process. Our tests on several psycholinguistic datasets showed that our model is able to account for semantic phenomena such as the context-sensitive update of argument expectations and of logical metonymies.
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