Knowledge-Based Support Vector Machine Classi ers
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Shavlik, Jude
Mangasarian, Olvi
Fung, Glenn
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Technical Report
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Abstract
Prior knowledge in the form of multiple polyhedral sets, each belonging
to one of two categories, is introduced into a reformulation
of a linear support vector machine classi er. The resulting formulation
leads to a linear program that can be solved e ciently. Real
world examples, from DNA sequencing and breast cancer prognosis,
demonstrate the e ectiveness of the proposed method. Numerical
results show improvement in test set accuracy after the incorporation
of prior knowledge into ordinary, data-based linear support
vector machine classi ers. One experiment also shows that a linear
classi er, based solely on prior knowledge, far outperforms the
direct application of prior knowledge rules to classify data.
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01-09