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| | Download PDFOpen PDF in browser Download PDFOpen PDF in browserA Mathematical Introduction to SVMs with Self-Concordant KernelEasyChair Preprint 1534123 pages•Date: November 1, 2024AbstractA derivation of so-called ``soft-marginsupport vector machines with kernel'' is presented
 along with elementary proofs that do not rely
 on concepts from functional analysis such as Mercer's theorem
 or reproducing kernel Hilbert spaces which are
 frequently cited in this context.
 The analysis leads to new
 continuity properties of the kernel functions,
 in particular a self-concordance condition for the kernel.
 Practical aspects concerning the implementation
 and the choice of the kernel are addressed and illustrated with
 some numerical examples.
 The derivations are intended for a general audience, requiring
 basic knowledge of calculus and linear algebra, while
 some more advanced results
 from optimization theory are being introduced in a
 self-contained form.
 Keyphrases: Support Vector Machine, continuity, kernel | 
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