Cynthia Van Hee*, Marjan Van de Kauter*, Orphée De Clercq*, Els Lefever*, Bart Desmet* and Véronique Hoste*
*Language and Translation Technology Team, Dep. of Translation, Interpreting and Communication, Ghent University. Groot-Brittanniëlaan 45, 9000 Ghent, Belgium
Résumé (en anglais)
In the past decade, sentiment analysis research has thrived, especially on social media. While this data genre is suitable to extract opinions and sentiment, it is known to be noisy. Complex normalisation methods have been developed to transform noisy text into its standard form, but their effect on tasks like sentiment analysis remains underinvestigated. Sentiment analysis approaches mostly include spell checking or rule-based normalisation as preprocessing and rarely investigate its impact on the task performance. We present an optimised sentiment classifier and investigate to what extent its performance can be enhanced by integrating SMT-based normalisation as preprocessing. Experiments on a test set comprising a variety of user-generated content genres revealed that normalisation improves sentiment classification performance on tweets and blog posts, showing the model’s ability to generalise to other data genres.