Bianca Guita


2024

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ItGraSyll: A Computational Analysis of Graphical Syllabification and Stress Assignment in Italian
Liviu Dinu | Ioan-Bogdan Iordache | Simona Georgescu | Alina Maria Cristea | Bianca Guita
Proceedings of the 10th Italian Conference on Computational Linguistics (CLiC-it 2024)

In this paper we build a dataset of Italian syllables. We perform quantitative and qualitative analyses on the syllabification and stress assignment in Italian. We propose a machine learning model, based on deep-learning techniques, for automatically inferring syllabification and stress assignment. For stress prediction we report 94.45% word-level accuracy, and for syllabification we report 98.41% word-level accuracy and 99.82% hyphen-level accuracy.