Prediction performance of support vector machines on input vector normalization methods
Author:
Daehyon Kim a
| Affiliation: | a Division of Transportation and Logistics System Engineering, Yosu National University, Jeollanam-Do, Korea |
DOI:
10.1080/00207160410001684325
Publication Frequency:
15 issues per year
Published in:
International Journal of Computer Mathematics,
Volume
81,
Issue
5
May
2004
, pages 547
- 554
Subjects:
Analysis - Mathematics;
Bioinformatics;
Computer Mathematics;
Discrete Mathematics;
Mathematical Finance;
Mathematical Logic;
Mathematical Numerical Analysis;
Systems & Computer Architecture;
Number of References: 21
Formats available:
PDF
(English)
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Abstract
Support vector machines (SVM) based on the statistical learning theory is currently one of the most popular and efficient approaches for pattern recognition problem, because of their remarkable performance in terms of prediction accuracy. It is, however, required to choose a proper normalization method for input vectors in order to improve the system performance. Various normalization methods for SVMs have been studied in this research and the results showed that the normalization methods could affect the prediction performance. The results could be useful for determining a proper normalization method to achieve the best performance in SVMs.
|
| Keywords: Support vector machines; Pattern recognition; Normalization |
| view references (21) : view citations |

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