Data di Pubblicazione:
2020
Abstract:
The paper focuses on what two different types of Recurrent Neural Networks, namely a
recurrent Long Short-Term Memory and a recurrent variant of self-organizing memories, a Temporal
Self-Organizing Map, can tell us about speakers' learning and processing a set of fully inflected
verb forms selected from the top-frequency paradigms of Italian and German. Both architectures,
due to the re-entrant layer of temporal connectivity, can develop a strong sensitivity to sequential
patterns that are highly attested in the training data. The main goal is to evaluate learning
and processing dynamics of verb inflection data in the two neural networks by focusing on
the effects of morphological structure on word production and word recognition, as well as on
word generalization for untrained verb forms. For both models, results show that production
and recognition, as well as generalization, are facilitated for verb forms in regular paradigms.
However, the two models are differently influenced by structural effects, with the Temporal
Self-Organizing Map more prone to adaptively find a balance between processing issues of learnability
and generalization, on the one side, and discriminability on the other side.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
word-learning; serial word processing; recurrent neural networks; long short-term memories; temporal self-organizing memories
Elenco autori:
Marzi, Claudia
Link alla scheda completa:
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