NUIG at EmoInt-2017: BiLSTM and SVR Ensemble to Detect Emotion Intensity

نویسندگان

  • Vladimir Andryushechkin
  • Ian Wood
  • James O'Neill
چکیده

This paper describes the entry NUIG in the WASSA 20171 shared task on emotion recognition. The NUIG system used an SVR (SVM regression) and BiLSTM ensemble, utilizing primarily n-grams (for SVR features) and tweet word embeddings (for BiLSTM features). Experiments were carried out on several other candidate features, some of which were added to the SVR model. Parameter selection for the SVR model was run as a grid search whilst parameters for the BiLSTM model were selected through a non-exhaustive ad-hoc search.

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تاریخ انتشار 2017