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Eyelid Movement Command Classification Using Machine Learning
Philip P. Graybill
, Mehdi Kiani
Materials Research Institute (MRI)
Center for Neural Engineering
School of Electrical Engineering and Computer Science
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Three-order
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Eyelid
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Logistic Regression Classifier
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Electric Wheelchair
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Computer Science
Support Vector Machine
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Memory Resource
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Machine Learning
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Logistic Regression
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