Researchers have developed MOJO, a novel training framework for spike-tokenizing neural data models. MOJO integrates self-supervised learning via masked autoencoding with supervised learning, enabling the use of unlabeled data. This approach significantly improves decoding performance, especially in low-data scenarios, and generalizes across species and neural modalities like human electrocorticography. AI
IMPACT This research could lead to more flexible and scalable data usage for training neuro-foundation models, improving brain-computer interfaces.
RANK_REASON The cluster contains a research paper detailing a new method for neural data decoding.
- human electrocorticography
- Masked autOencoder-based JOint training
- Mojo
- NFMs
- self-supervised learning
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