Leveraging Large Amounts of Weakly Supervised Data for Multi-Language Sentiment Classification
Abstract
This paper presents a novel approach for multi-lingual sentiment classification in short texts. This is a challenging task as the amount of training data in languages other than English is very limited. Previously proposed multi-lingual approaches typically require to establish a correspondence to English for which powerful classifiers are already available. In contrast, our method does not require such supervision. We leverage large amounts of weakly-supervised data in various languages to train a multi-layer convolutional network and demonstrate the importance of using pre-training of such networks. We thoroughly evaluate our approach on various multi-lingual datasets, including the recent SemEval-2016 sentiment prediction benchmark (Task 4), where we achieved state-of-the-art performance. We also compare the performance of our model trained individually for each language to a variant trained for all languages at once. We show that the latter model reaches slightly worse - but still acceptable - performance when compared to the single language model, while benefiting from better generalization properties across languages.
Cite
@article{arxiv.1703.02504,
title = {Leveraging Large Amounts of Weakly Supervised Data for Multi-Language Sentiment Classification},
author = {Jan Deriu and Aurelien Lucchi and Valeria De Luca and Aliaksei Severyn and Simon Müller and Mark Cieliebak and Thomas Hofmann and Martin Jaggi},
journal= {arXiv preprint arXiv:1703.02504},
year = {2017}
}
Comments
appearing at WWW 2017 - 26th International World Wide Web Conference