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Main Authors: Klein, Timon, Minakowski, Piotr, Sager, Sebastian, Schotthöfer, Steffen
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.08059
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author Klein, Timon
Minakowski, Piotr
Sager, Sebastian
Schotthöfer, Steffen
author_facet Klein, Timon
Minakowski, Piotr
Sager, Sebastian
Schotthöfer, Steffen
contents Subject-specific distribution shifts represent a fundamental obstacle to developing foundation models for brain decoding. We propose the Subject-Specific Low-Rank Adapter (SuLoRA), a drop-in replacement for standard linear or convolutional layers that captures inter-subject variability by decomposing weights into a shared, subject-invariant component and a lightweight, low-rank correction unique to each subject. This explicit separation enables existing architectures to become robust to subject shifts without architectural redesign. We evaluate SuLoRA on MEG speech perception and EEG motor imagery tasks across CNN and transformer architectures. In the speech decoding task, SuLoRA exceeds the baseline performance with half of the parameters. On motor imagery dataset, SuLoRA outperforms both subject-agnostic models and independently trained subject-specific models. SuLoRA offers a practical path towards effective cross-subject foundation models for brain signal applications.
format Preprint
id arxiv_https___arxiv_org_abs_2510_08059
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Mitigating Subject Dependency in EEG Decoding with Subject-Specific Low-Rank Adapters
Klein, Timon
Minakowski, Piotr
Sager, Sebastian
Schotthöfer, Steffen
Machine Learning
Subject-specific distribution shifts represent a fundamental obstacle to developing foundation models for brain decoding. We propose the Subject-Specific Low-Rank Adapter (SuLoRA), a drop-in replacement for standard linear or convolutional layers that captures inter-subject variability by decomposing weights into a shared, subject-invariant component and a lightweight, low-rank correction unique to each subject. This explicit separation enables existing architectures to become robust to subject shifts without architectural redesign. We evaluate SuLoRA on MEG speech perception and EEG motor imagery tasks across CNN and transformer architectures. In the speech decoding task, SuLoRA exceeds the baseline performance with half of the parameters. On motor imagery dataset, SuLoRA outperforms both subject-agnostic models and independently trained subject-specific models. SuLoRA offers a practical path towards effective cross-subject foundation models for brain signal applications.
title Mitigating Subject Dependency in EEG Decoding with Subject-Specific Low-Rank Adapters
topic Machine Learning
url https://arxiv.org/abs/2510.08059