Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
10524887 | Journal of Statistical Planning and Inference | 2012 | 16 Pages |
Abstract
We consider for quantile regression and support vector regression a kernel-based online learning algorithm associated with a sequence of insensitive pinball loss functions. Our error analysis and derived learning rates show quantitatively that the statistical performance of the learning algorithm may vary with the quantile parameter Ï. In our analysis we overcome the technical difficulty caused by the varying insensitive parameter introduced with a motivation of sparsity.
Keywords
Related Topics
Physical Sciences and Engineering
Mathematics
Applied Mathematics
Authors
Ting Hu, Dao-Hong Xiang, Ding-Xuan Zhou,