2022
DOI: 10.1109/ojsp.2022.3195150
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Weight Vector Tuning and Asymptotic Analysis of Binary Linear Classifiers

Abstract: Unlike its intercept, a linear classifier's weight vector cannot be tuned by a simple grid search. Hence, this paper proposes weight vector tuning of a generic binary linear classifier through the parameterization of a decomposition of the discriminant by a scalar which controls the trade-off between conflicting informative and noisy terms. By varying this parameter, the original weight vector is modified in a meaningful way. Applying this method to a number of linear classifiers under a variety of data dimens… Show more

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