Large Margin Classifiers: Convex Loss, Low Noise, and Convergence Rates
暂无分享,去创建一个
[1] 丸山 徹. Convex Analysisの二,三の進展について , 1977 .
[2] Peter L. Bartlett,et al. Efficient agnostic learning of neural networks with bounded fan-in , 1996, IEEE Trans. Inf. Theory.
[3] Yi Lin. A note on margin-based loss functions in classification , 2004 .
[4] Shahar Mendelson,et al. Improving the sample complexity using global data , 2002, IEEE Trans. Inf. Theory.
[5] Shie Mannor,et al. The Consistency of Greedy Algorithms for Classification , 2002, COLT.
[6] Wenxin Jiang. Process consistency for AdaBoost , 2003 .
[7] Tong Zhang. Statistical behavior and consistency of classification methods based on convex risk minimization , 2003 .
[8] G. Lugosi,et al. On the Bayes-risk consistency of regularized boosting methods , 2003 .
[9] A. Tsybakov,et al. Optimal aggregation of classifiers in statistical learning , 2003 .
[10] Yi Lin. A note on margin-based loss functions in classification , 2004 .