Fine-grained Generalization Analysis of Vector-valued Learning
Wu, Liang, Ledent, Antoine, Lei, Yunwen, Kloft, Marius
–arXiv.org Artificial Intelligence
Many fundamental machine learning tasks can be formulated as a problem of learning with vector-valued functions, where we learn multiple scalar-valued functions together. Although there is some generalization analysis on different specific algorithms under the empirical risk minimization principle, a unifying analysis of vector-valued learning under a regularization framework is still lacking. In this paper, we initiate the generalization analysis of regularized vector-valued learning algorithms by presenting bounds with a mild dependency on the output dimension and a fast rate on the sample size. Our discussions relax the existing assumptions on the restrictive constraint of hypothesis spaces, smoothness of loss functions and low-noise condition. To understand the interaction between optimization and learning, we further use our results to derive the first generalization bounds for stochastic gradient descent with vector-valued functions. We apply our general results to multi-class classification and multi-label classification, which yield the first bounds with a logarithmic dependency on the output dimension for extreme multi-label classification with the Frobenius regularization. As a byproduct, we derive a Rademacher complexity bound for loss function classes defined in terms of a general strongly convex function.
arXiv.org Artificial Intelligence
Apr-29-2021
- Country:
- Europe
- United Kingdom (0.14)
- Germany > Rhineland-Palatinate
- Kaiserslautern (0.04)
- Asia > China
- Sichuan Province > Chengdu (0.04)
- Europe
- Genre:
- Research Report > New Finding (0.34)
- Technology: