A Comparison of Sense-level Sentiment Scores

GWC 2019  ·  Francis Bond, Arkadiusz Janz, Maciej Piasecki ·

In this paper, we compare a variety of sense-tagged sentiment resources, including SentiWordNet, ML-Senticon, plWordNet emo and the NTU Multilingual Corpus. The goal is to investigate the quality of the resources and see how well the sentiment polarity annotation maps across languages.

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