Text simplification (TS) is a natural language processing task devoted to the modification of a text in such a way that the grammar and structure of the phrases is greatly simplified, preserving the underlying meaning and information contents. In this paper we give a contribution to the TS field presenting a deep neural network model able to detect the complexity of italian sentences. In particular, the system gives a score to an input text that identifies the confidence level during the decision making process and that could be interpreted as a measure of the sentence complexity. Experiments have been carried out on one public corpus of Italian texts created specifically for the task of TS. We have also provided a comparison of our model with a state of the art method used for the same purpose
Lo Bosco, G., Pilato, G., Schicchi D. (2019). A Recurrent Deep Neural Network Model to measure Sentence Complexity for the Italian Language. In A. Chella, I. Infantino, A. Lieto (a cura di), AIC 2018, Artificial Intelligence and Cognition 2018 - Proceedings of the 6th International Workshop on Artificial Intelligence and Cognition (pp. 90-97).
A Recurrent Deep Neural Network Model to measure Sentence Complexity for the Italian Language
Lo Bosco, G;Pilato, G;Schicchi D.
2019-01-01
Abstract
Text simplification (TS) is a natural language processing task devoted to the modification of a text in such a way that the grammar and structure of the phrases is greatly simplified, preserving the underlying meaning and information contents. In this paper we give a contribution to the TS field presenting a deep neural network model able to detect the complexity of italian sentences. In particular, the system gives a score to an input text that identifies the confidence level during the decision making process and that could be interpreted as a measure of the sentence complexity. Experiments have been carried out on one public corpus of Italian texts created specifically for the task of TS. We have also provided a comparison of our model with a state of the art method used for the same purposeFile | Dimensione | Formato | |
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