NeuroLM: A Universal Multi-task Foundation Model for Bridging the Gap between Language and EEG Signals
Wei-Bang Jiang, Yansen Wang, Bao-Liang Lu, Dongsheng Li

TL;DR
NeuroLM is a multi-task foundation model that unifies EEG and language understanding using large language models, enabling versatile EEG task handling without extensive fine-tuning.
Contribution
This work introduces NeuroLM, the first multi-task EEG-language model leveraging LLMs with a novel neural tokenizer, enabling multi-task learning and inference across diverse EEG applications.
Findings
NeuroLM-XL has 1.7 billion parameters for EEG processing.
Pre-trained on 25,000 hours of EEG data.
Achieves strong performance on six downstream EEG tasks.
Abstract
Recent advancements for large-scale pre-training with neural signals such as electroencephalogram (EEG) have shown promising results, significantly boosting the development of brain-computer interfaces (BCIs) and healthcare. However, these pre-trained models often require full fine-tuning on each downstream task to achieve substantial improvements, limiting their versatility and usability, and leading to considerable resource wastage. To tackle these challenges, we propose NeuroLM, the first multi-task foundation model that leverages the capabilities of Large Language Models (LLMs) by regarding EEG signals as a foreign language, endowing the model with multi-task learning and inference capabilities. Our approach begins with learning a text-aligned neural tokenizer through vector-quantized temporal-frequency prediction, which encodes EEG signals into discrete neural tokens. These EEG…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces
