Leveraging contextual embeddings and self-attention neural networks with bi-attention for sentiment analysis

作者:Magdalena Biesialska, Katarzyna Biesialska, Henryk Rybinski

摘要

People express their opinions and views in different and often ambiguous ways, hence the meaning of their words is often not explicitly stated and frequently depends on the context. Therefore, it is difficult for machines to process and understand the information conveyed in human languages. This work addresses the problem of sentiment analysis (SA). We propose a simple yet comprehensive method which uses contextual embeddings and a self-attention mechanism to detect and classify sentiment. We perform experiments on reviews from different domains, as well as on languages from three different language families, including morphologically rich Polish and German. We show that our approach is on a par with state-of-the-art models or even outperforms them in several cases. Our work also demonstrates the superiority of models leveraging contextual embeddings. In sum, in this paper we make a step towards building a universal, multilingual sentiment classifier.

论文关键词:Sentiment classification, Word embeddings, Transformer

论文评审过程:

论文官网地址:https://doi.org/10.1007/s10844-021-00664-7