Linear Transformations for Cross-lingual Sentiment Analysis

Přibáň, Pavel, Šmíd, Jakub, Mištera, Adam, Král, Pavel

arXiv.org Artificial Intelligence 

We perform zero-shot cross-lingual classification using five linear transformations combined with LSTM and CNN based classifiers. We compare the performance of the individual transformations, and in addition, we confront the transformation-based approach with existing state-of-the-art BERT-like models. We show that the pre-trained embeddings from the target domain are crucial to improving the cross-lingual classification results, unlike in the monolingual classification, where the effect is not so distinctive.