RPNT: Robust Pre-trained Neural Transformer -- A Pathway for Generalized Motor Decoding
Hao Fang, Ryan A. Canfield, Tomohiro Ouchi, Beatrice Macagno, Eli Shlizerman, Amy L. Orsborn

TL;DR
RPNT is a pretrained neural transformer designed for robust brain motor decoding, capable of generalizing across various neural recording conditions and outperforming existing models.
Contribution
The paper introduces a novel neural transformer architecture with specialized components for neural data, demonstrating improved generalization in motor decoding tasks.
Findings
RPNT outperforms existing models on cross-session and cross-subject tasks.
Pretraining on diverse datasets enhances neural decoding robustness.
Innovative components enable effective modeling of neural spike activity.
Abstract
Brain motor decoding aims to interpret and translate neural activity into behaviors. Decoding models should generalize across variations, such as recordings from different brain sites, experimental sessions, behavior types, and subjects, will be critical for real-world applications. Current decoding models only partially address these challenges. In this work, we develop a pretrained neural transformer model, RPNT - Robust Pretrained Neural Transformer, designed to achieve robust generalization through pretraining, which in turn enables effective finetuning for downstream motor decoding tasks. We achieved the proposed RPNT architecture by systematically investigating which transformer building blocks could be suitable for neural spike activity modeling, since components from models developed for other modalities, such as text and images, do not transfer directly to neural data. The…
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