We propose a hybrid approach for multilingual sentiment analysis that combines extractive and abstractive summarization to address the limitations of standalone methods. The model integrates TF-IDF-based extraction with a fine-tuned XLM-R abstractive module, enhanced by dynamic thresholding and cultural adaptation. Experiments across 10 languages show significant improvements over baselines, achieving 0.90 accuracy for English and 0.84 for low-resource languages. The approach also demonstrates 22% greater computational efficiency than traditional methods. Practical applications include real-time brand monitoring and cross-cultural discourse analysis. Future work will focus on optimization for low-resource languages via 8-bit quantization.
@article{arxiv.2506.06929,
title = {Hybrid Extractive Abstractive Summarization for Multilingual Sentiment Analysis},
author = {Mikhail Krasitskii and Grigori Sidorov and Olga Kolesnikova and Liliana Chanona Hernandez and Alexander Gelbukh},
journal= {arXiv preprint arXiv:2506.06929},
year = {2025}
}