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Main Authors: Zhang, Zhanqi, Li, Shun, Sabatini, Bernardo L., Aoi, Mikio, Mishne, Gal
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.18299
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author Zhang, Zhanqi
Li, Shun
Sabatini, Bernardo L.
Aoi, Mikio
Mishne, Gal
author_facet Zhang, Zhanqi
Li, Shun
Sabatini, Bernardo L.
Aoi, Mikio
Mishne, Gal
contents Intracortical brain-computer interfaces (BCIs) can decode speech from neural activity with high accuracy when trained on data pooled across recording sessions. In realistic deployment, however, models must generalize to new sessions without labeled data, and performance often degrades due to cross-session nonstationarities (e.g., electrode shifts, neural turnover, and changes in user strategy). In this paper, we propose ALIGN, a session-invariant learning framework based on multi-domain adversarial neural networks for semi-supervised cross-session adaptation. ALIGN trains a feature encoder jointly with a phoneme classifier and a domain classifier operating on the latent representation. Through adversarial optimization, the encoder is encouraged to preserve task-relevant information while suppressing session-specific cues. We evaluate ALIGN on intracortical speech decoding and find that it generalizes consistently better to previously unseen sessions, improving both phoneme error rate and word error rate relative to baselines. These results indicate that adversarial domain alignment is an effective approach for mitigating session-level distribution shift and enabling robust longitudinal BCI decoding.
format Preprint
id arxiv_https___arxiv_org_abs_2603_18299
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle ALIGN: Adversarial Learning for Generalizable Speech Neuroprosthesis
Zhang, Zhanqi
Li, Shun
Sabatini, Bernardo L.
Aoi, Mikio
Mishne, Gal
Machine Learning
Neural and Evolutionary Computing
Sound
Intracortical brain-computer interfaces (BCIs) can decode speech from neural activity with high accuracy when trained on data pooled across recording sessions. In realistic deployment, however, models must generalize to new sessions without labeled data, and performance often degrades due to cross-session nonstationarities (e.g., electrode shifts, neural turnover, and changes in user strategy). In this paper, we propose ALIGN, a session-invariant learning framework based on multi-domain adversarial neural networks for semi-supervised cross-session adaptation. ALIGN trains a feature encoder jointly with a phoneme classifier and a domain classifier operating on the latent representation. Through adversarial optimization, the encoder is encouraged to preserve task-relevant information while suppressing session-specific cues. We evaluate ALIGN on intracortical speech decoding and find that it generalizes consistently better to previously unseen sessions, improving both phoneme error rate and word error rate relative to baselines. These results indicate that adversarial domain alignment is an effective approach for mitigating session-level distribution shift and enabling robust longitudinal BCI decoding.
title ALIGN: Adversarial Learning for Generalizable Speech Neuroprosthesis
topic Machine Learning
Neural and Evolutionary Computing
Sound
url https://arxiv.org/abs/2603.18299