English

Comparison of Binary Classification Based on Signed Distance Functions with Support Vector Machines

Machine Learning 2008-12-17 v1 Computational Geometry

Abstract

We investigate the performance of a simple signed distance function (SDF) based method by direct comparison with standard SVM packages, as well as K-nearest neighbor and RBFN methods. We present experimental results comparing the SDF approach with other classifiers on both synthetic geometric problems and five benchmark clinical microarray data sets. On both geometric problems and microarray data sets, the non-optimized SDF based classifiers perform just as well or slightly better than well-developed, standard SVM methods. These results demonstrate the potential accuracy of SDF-based methods on some types of problems.

Keywords

Cite

@article{arxiv.0812.3147,
  title  = {Comparison of Binary Classification Based on Signed Distance Functions with Support Vector Machines},
  author = {Erik M. Boczko and Todd Young and Minhui Zie and Di Wu},
  journal= {arXiv preprint arXiv:0812.3147},
  year   = {2008}
}

Comments

5 pages, 4 figures. Presented at the Ohio Collaborative Conference on Bioinformatics (OCCBIO), June 2006

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