Conference Paper2024

Physiological Signal Data-Driven Workplace Stress Detection Among Healthcare Professionals Using BiLSTM-AM and Ensemble Stacking Models

Syed Tangim Pasha, Nabarun Halder, Jahanggir Hossain Setu, Ashraful Islam, Md Zahangir Hossain

IEEE 2024 International Advances in Science & Engineering Technology (ASET) Multi-Conferences, Dubai

IEEE, pp. 1-10

CCDS Authors

References

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