The paper provides a cognitively motivated method for evaluating the inflectional complexity of a language, based on a sample of"raw" inflected word forms processed and learned by a recurrent self-organising neural network with fixed parameter setting. Trainingitems contain no information about either morphological content or structure. This makes the proposed method independent of bothmeta-linguistic issues (e.g. format and expressive power of descriptive rules, manual or automated segmentation of input forms, numberof inflectional classes etc.) and language-specific typological aspects (e.g. word-based, stem-based or template-based morphology).Results are illustrated by contrasting Arabic, English, German, Greek, Italian and Spanish.
Evaluating Inflectional Complexity Crosslinguistically: a Processing Perspective
Marzi C
Primo
;Ferro MSecondo
;Nahli O;Pirrelli VUltimo
2018
Abstract
The paper provides a cognitively motivated method for evaluating the inflectional complexity of a language, based on a sample of"raw" inflected word forms processed and learned by a recurrent self-organising neural network with fixed parameter setting. Trainingitems contain no information about either morphological content or structure. This makes the proposed method independent of bothmeta-linguistic issues (e.g. format and expressive power of descriptive rules, manual or automated segmentation of input forms, numberof inflectional classes etc.) and language-specific typological aspects (e.g. word-based, stem-based or template-based morphology).Results are illustrated by contrasting Arabic, English, German, Greek, Italian and Spanish.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.