An EEG Dataset for Multimodal Semantic Alignment and Neural Decoding during Reading and Listening

用于阅读和聆听过程中多模态语义对齐和神经解码的脑电图数据集

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Abstract

EEG-based neural decoding requires large-scale benchmark datasets. Paired brain-language data across speaking, listening, and reading modalities are essential for aligning neural activity with the semantic representation of large language models (LLMs). However, such datasets are rare, especially for non-English languages. Here, we present ChineseEEG-2, a high-density EEG dataset designed for benchmarking neural decoding models under real-world language tasks. Building on our previous ChineseEEG dataset, which focused on silent reading, ChineseEEG-2 adds two active modalities: Reading Aloud (RA) and Passive Listening (PL), using the same Chinese corpus. EEG and audio were simultaneously recorded from four participants during  ~10.8 hours of reading aloud. These recordings were then played to eight other participants, collecting  ~21.6 hours of EEG during listening. This setup enables precise temporal and semantic alignment across the RA and PL modalities. ChineseEEG-2 includes EEG signals, speech audio, aligned semantic embeddings from pre-trained language models, and task labels. Together with ChineseEEG, this dataset supports joint semantic alignment learning across speaking, listening, and reading. It enables benchmarking of neural decoding algorithms and promotes brain-LLM alignment under multimodal language tasks, especially in Chinese. ChineseEEG-2 provides a benchmark dataset for next-generation neural semantic decoding.

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