Teresa Alcamo, A. Cuzzocrea, G. Pilato, Daniele Schicchi
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Sentiment Mining and Analysis over Text Corpora via Complex Deep Learning Naural Architectures
We analyze and compare five deep-learning neural architectures to manage the problem of irony and sarcasm detection for the Italian language. We briefly analyze the model architectures to choose the best compromise between performances and complexity. The obtained results show the effectiveness of such systems to handle the problem by achieving 93\% of F1-Score in the best case. As a case study, we also illustrate a possible embedding of the neural systems in a cloud computing infrastructure to exploit the computational advantage of using such an approach in tackling big data.