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, dimensionality reduction and/or machine learning methods (e.g., Lasso, ridge regression) is highly desirable. Familiarity with neurostimulation, Parkinson’s disease, or neuropsychological assessment tools is
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(iii) complex architectures with tightly coupled components hinder modular adaptation. To address these limitations, we research a physics-guided machine learning framework that integrates physical
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. Additional comments Mentor: Matej Hoffmann, Faculty of Electrical Engineering, Dept. Cybernetics, matej.hofmann@fel.cvut.cz , https://sites.google.com/site/matejhof https://scholar.google.ch/citations?user
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that preserves object identity or style. They should have a solid publication record in top-tier computer vision conferences such as CVPR, ICCV, or ECCV, and demonstrate proficiency in deep learning frameworks