Open Access
Time Series Forecasting with Transformer Architectures
1
University of São Paulo, Brazil
2
Cairo University, Egypt
3
Warsaw University of Technology, Poland
4
KTH Royal Institute of Technology, Sweden
Abstract
This research explores advanced techniques for this research area. We introduce a hybrid model combining advanced algorithms with modern techniques to improve accuracy. Our experiments on diverse datasets demonstrate superior performance compared to existing baseline methods. The proposed framework achieves 36% accuracy on standard benchmark datasets.
Keywords
natural language processing,text mining,sentiment analysis,NLP,transformers
How to Cite
Santos, M., Hassan, A., Kowalski, J., & Lindqvist, A. (2019). Time Series Forecasting with Transformer Architectures. Nivo Light - International Journal of Research & Innovation, 1(3), 6–11. https://doi.org/10.28051/ojstest-12
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