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GePpeTto Carves Italian into a Language Model

Lorenzo De Mattei, Michele Cafagna, Felice Dell’Orletta⋄, Malvina Nissim, Marco Guerini, Monti, Johanna, Dell'Orletta, Felice, Tamburini, Fabio

2020University of Groningen research database (University of Groningen / Centre for Information Technology)24 citationsOpen Access PDF

Abstract

In the last few years, pre-trained neural architectures have provided impressive improvements across several NLP tasks. Still, generative language models are available mainly for English. We develop GePpeTto, the first generative language model for Italian, built using the GPT-2 architecture. We provide a thorough analysis of GePpeTto’s quality by means of both an automatic and a human-based evaluation. The automatic assessment consists in (i) calculating perplexity across different genres and (ii) a profiling analysis over GePpeTto’s writing characteristics. We find that GePpeTto’s production is a sort of bonsai version of human production, with shorter but yet complex sentences. Human evaluation is performed over a sentence completion task, where GePpeTto’s output is judged as natural more often than not, and much closer to the original human texts than to a simpler language model which we take as baseline.

Topics & Concepts

PerplexityComputer scienceGenerative grammarNatural language processingSentencesortArtificial intelligenceTask (project management)Language modelProfiling (computer programming)Generative modelArchitectureProgramming languageEngineeringHistoryInformation retrievalSystems engineeringArchaeologyTopic ModelingNatural Language Processing TechniquesText Readability and Simplification
GePpeTto Carves Italian into a Language Model | Litcius