Multi Task Learning for Predicting Music Video Clip and Participant Identification from Brain Responses
Source
Cods Comad 2024 Proceedings of the 8th Jpint International Conference on Data Science and Management of Data
Date Issued
2025-06-25
Author(s)
Mehta, Jhanvi H.
Priyadarshani, Muskan
Jha, Aditi
Miyapuram, Krishna P.
Abstract
We designed a CNN-based Multi-task (MTL) classification model to predict music-video clips and identify participants from EEG responses to affective audio-visual stimuli from the DEAP dataset. Leveraging the capabilities of MTL models, participants are identified more accurately and clips are predicted better than single-task techniques. Variable train-test splits do not affect participant prediction task but show depreciation in clip prediction accuracy. It is true for both multi-task and singular task models. These findings show that MTL models may capture complex brain patterns with improved accuracy, making it a reliable EEG-based categorization solution.
Keywords
1D CNN | Classification | EEG | Multi-task Multi-class | Music Video Clip Prediction | Participant Identification
