Microblog Emotion Classification by Computing Similarity in Text, Time, and Space

WS 2016  ·  Anja Summa, Bernd Resch, Michael Strube ·

Most work in NLP analysing microblogs focuses on textual content thus neglecting temporal and spatial information. We present a new interdisciplinary method for emotion classification that combines linguistic, temporal, and spatial information into a single metric. We create a graph of labeled and unlabeled tweets that encodes the relations between neighboring tweets with respect to their emotion labels. Graph-based semi-supervised learning labels all tweets with an emotion.

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