Cross-subject Decoding of Eye Movement Goals from Local Field Potentials
Marko Angjelichinoski, John Choi, Taposh Banerjee, Bijan Pesaran and, Vahid Tarokh

TL;DR
This paper introduces a transfer learning method called data centering to improve cross-subject decoding of eye movement goals from local field potentials, achieving high accuracy in macaque experiments.
Contribution
The paper presents a novel supervised transfer learning technique, data centering, for adapting feature spaces between subjects in LFP-based decoding tasks.
Findings
Achieved 80% decoding accuracy in macaque eye movement tasks.
Outperformed standard methods, especially with imbalanced data.
Demonstrated viability for cross-subject brain-computer interfaces.
Abstract
Objective. We consider the cross-subject decoding problem from local field potential (LFP) signals, where training data collected from the prefrontal cortex (PFC) of a source subject is used to decode intended motor actions in a destination subject. Approach. We propose a novel supervised transfer learning technique, referred to as data centering, which is used to adapt the feature space of the source to the feature space of the destination. The key ingredients of data centering are the transfer functions used to model the deterministic component of the relationship between the source and destination feature spaces. We propose an efficient data-driven estimation approach for linear transfer functions that uses the first and second order moments of the class-conditional distributions. Main result. We apply our data centering technique with linear transfer functions for cross-subject…
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