Emerging Sentiment Language Model for Emotion Detection
نویسندگان
چکیده
English. In this paper we present an approach for joy, anger and neutral emotions detection based on an emerging sentiment language model. We propose an approach that can detect specific emotions from positive, neutral and negative sentiments and which favors the tweets that occur at recent sentiment spikes. Our results suggest that our approach can effectively detect joy, neutral and anger emotions and that it performs better compared to the baselines. Italiano. In questo articolo presentiamo un approccio per rilevare gioia, rabbia e emozione neutra basato su un modello di sentiment analysis emergente. Proponiamo un approccio in grado di rilevare emozioni specifiche da sentimenti positivi, neutri e negativi e che favorisca i tweets che si verificano nei picchi recenti di sentimento. I risultati suggeriscono che il nostro approccio può rilevare efficacemente le emozioni di gioia, rabbia e neutra che ottiene migliori risultati delle baseline.
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تاریخ انتشار 2017