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Supervised multi-class classification with adaptive and automatic parameter tuning
Conference proceeding

Supervised multi-class classification with adaptive and automatic parameter tuning

Chao Chen, Mei-Ling Shyu and Shu-Ching Chen
2009 IEEE International Conference on Information Reuse & Integration, pp.433-434
2009-08

Abstract

Chaos Equations Iterative methods Personal communication networks Robustness Testing Training data USA Councils
In this paper, a classification framework is developed to address the issue that empirical determination of the parameters and their values typically makes a classification framework less adaptive and general to different data sets and application domains. Experimental results show that our proposed framework achieves (1) better performance over other comparative supervised classification methods, (2) more robust to imbalanced data sets, and (3) smaller performance variance to different data sets.

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