4.6 Article

A Deep Learning Sentiment Analyser for Social Media Comments in Low-Resource Languages

Journal

ELECTRONICS
Volume 10, Issue 10, Pages -

Publisher

MDPI
DOI: 10.3390/electronics10101133

Keywords

sentiment analysis; machine learning; deep neural network; 1D-CNN; BiLSTM; attention mechanism; Facebook comments; COVID-19

Funding

  1. Linnaeus University, Sweden

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This research conducts sentiment analysis on Albanian language comments on Facebook regarding the current pandemic situation, by designing and developing a sentiment analyser using deep learning techniques. Through training and validating on a large-scale dataset, the combination of BiLSTM with an attention mechanism achieves the highest performance with an F1 score of 72.09%.
During the pandemic, when people needed to physically distance, social media platforms have been one of the outlets where people expressed their opinions, thoughts, sentiments, and emotions regarding the pandemic situation. The core object of this research study is the sentiment analysis of peoples' opinions expressed on Facebook regarding the current pandemic situation in low-resource languages. To do this, we have created a large-scale dataset comprising of 10,742 manually classified comments in the Albanian language. Furthermore, in this paper we report our efforts on the design and development of a sentiment analyser that relies on deep learning. As a result, we report the experimental findings obtained from our proposed sentiment analyser using various classifier models with static and contextualized word embeddings, that is, fastText and BERT, trained and validated on our collected and curated dataset. Specifically, the findings reveal that combining the BiLSTM with an attention mechanism achieved the highest performance on our sentiment analysis task, with an F1 score of 72.09%.

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