The Italian Emoji Prediction task (ITAmoji) is proposed at EVALITA 2018 evaluation campaign for the first time, after the success of the twin Multilingual Emoji Prediction Task, organized in the context of SemEval-2018 in order to challenge the research community to automatically model the semantics of emojis in Twitter. Participants were invited to submit systems designed to predict, given an Italian tweet, its most likely associated emoji, selected in a wide and heterogeneous emoji space. Twelve runs were submitted at ITAmoji by five teams. We present the data sets, the evaluation methodology including different metrics and the approaches of the participating systems. We also present a comparison between the performance of automatic systems and humans solving the same task. Data and further information about this task can be found at: https://sites. google.com/view/itamoji/.

Overview of EVALITA 2018 Italian emoji prediction (ITAmojii) task

Francesca Chiusaroli
2018-01-01

Abstract

The Italian Emoji Prediction task (ITAmoji) is proposed at EVALITA 2018 evaluation campaign for the first time, after the success of the twin Multilingual Emoji Prediction Task, organized in the context of SemEval-2018 in order to challenge the research community to automatically model the semantics of emojis in Twitter. Participants were invited to submit systems designed to predict, given an Italian tweet, its most likely associated emoji, selected in a wide and heterogeneous emoji space. Twelve runs were submitted at ITAmoji by five teams. We present the data sets, the evaluation methodology including different metrics and the approaches of the participating systems. We also present a comparison between the performance of automatic systems and humans solving the same task. Data and further information about this task can be found at: https://sites. google.com/view/itamoji/.
2018
9788831978422
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11393/247691
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