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Do self-supervised speech and language models extract similar representations as human brain?

Authors :
Chen, Peili
He, Linyang
Fu, Li
Fan, Lu
Chang, Edward F.
Li, Yuanning
Publication Year :
2023

Abstract

Speech and language models trained through self-supervised learning (SSL) demonstrate strong alignment with brain activity during speech and language perception. However, given their distinct training modalities, it remains unclear whether they correlate with the same neural aspects. We directly address this question by evaluating the brain prediction performance of two representative SSL models, Wav2Vec2.0 and GPT-2, designed for speech and language tasks. Our findings reveal that both models accurately predict speech responses in the auditory cortex, with a significant correlation between their brain predictions. Notably, shared speech contextual information between Wav2Vec2.0 and GPT-2 accounts for the majority of explained variance in brain activity, surpassing static semantic and lower-level acoustic-phonetic information. These results underscore the convergence of speech contextual representations in SSL models and their alignment with the neural network underlying speech perception, offering valuable insights into both SSL models and the neural basis of speech and language processing.<br />Comment: To appear in 2024 IEEE International Conference on Acoustics, Speech and Signal Processing

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.04645
Document Type :
Working Paper