I. Introduction
Motor brain-machine interfaces (BMIs) aim to restore motor function in disabled subjects by decoding intended movement from neural activity [1]–[3]. The accuracy of these motor BMIs depends critically on how well they can model the encoding of intended movement in neural activity. A more accurate encoding model would also allow the corresponding decoder to more precisely extract information. Therefore, it is important to develop encoding models that have the potential to enhance future BMI developments.