Seung Gu Kang, Jeff Weber, et al.
ACS Fall 2023
Let X be a data matrix of rank ρ, representing n points in d-dimensional space. The linear support vector machine constructs a hyperplane separator that maximizes the 1- norm soft margin. We develop a new oblivious dimension reduction technique which is precomputed and can be applied to any input matrix X. We prove that, with high probability, the margin and minimum enclosing ball in the feature space are preserved to within ε-relative error, ensuring comparable generalization as in the original space. We present extensive experiments with real and synthetic data to support our theory.
Seung Gu Kang, Jeff Weber, et al.
ACS Fall 2023
Shyam Marjit, Harshit Singh, et al.
WACV 2025
Susan L. Spraragen
International Conference on Design and Emotion 2010
Daniel Karl I. Weidele, Hendrik Strobelt, et al.
SysML 2019