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This model is available for general use (research, commercial, and personal), provided strictly that you adhere to the following privacy and safety standards. By requesting access, you agree to be bound by the following ethical principles and the regulatory guidance outlined in EDPB Opinion 28/2024.
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- Attempt to extract, infer, or reconstruct subject-level EEG data or personal information from the model weights or outputs.
- Perform "Model Inversion" or "Membership Inference" attacks to extract statistical data related to specific individuals.
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- Minimize Data: Ensure any additional data used with the model is limited, pseudonymised where possible, and securely handled.
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