EMNLP 2025

November 07, 2025

Suzhou, China

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Recent major milestones have successfully reconstructed natural language from non-invasive brain signals (e.g. functional Magnetic Resonance Imaging (fMRI) and Electroencephalogram (EEG)) across subjects. However, we find current dataset splitting strategies for cross-subject brain-to-text decoding are wrong. Specifically, we first demonstrate that all current splitting methods suffer from data leakage problem, which refers to the leakage of validation and test data into training set, resulting in significant overfitting and overestimation of decoding models. In this study, we develop a right cross-subject data splitting criterion without data leakage for decoding fMRI and EEG signal to text. Some SOTA brain-to-text decoding models are re-evaluated correctly with the proposed criterion for further research.

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AlignX: Advancing Multilingual Large Language Models with Multilingual Representation Alignment
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AlignX: Advancing Multilingual Large Language Models with Multilingual Representation Alignment

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+2Yang FengMengyu Bu
Mengyu Bu and 4 other authors

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