Julien Jourdan


2019

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Sentiment Analysis for Multilingual Corpora
Svitlana Galeshchuk | Ju Qiu | Julien Jourdan
Proceedings of the 7th Workshop on Balto-Slavic Natural Language Processing

The paper presents a generic approach to the supervised sentiment analysis of social media content in Slavic languages. The method proposes translating the documents from the original language to English with Google’s Neural Translation Model. The resulted texts are then converted to vectors by averaging the vectorial representation of words derived from a pre-trained Word2Vec English model. Testing the approach with several machine learning methods on Polish, Slovenian and Croatian Twitter datasets returns up to 86% of classification accuracy on the out-of-sample data.