Projects per year
Abstract
Regularized empirical risk minimization using kernels and their corresponding reproducing kernel Hilbert spaces (RKHSs) plays an important role in machine learning. However, the actually used kernel often depends on one or on a few hyperparameters or the kernel is even data dependent in a much more complicated manner. Examples are Gaussian RBF kernels, kernel learning, and hierarchical Gaussian kernels which were recently proposed for deep learning. Therefore, the actually used kernel is often computed by a grid search or in an iterative manner and can often only be considered as an approximation to the “ideal” or “optimal” kernel.
The paper gives conditions under which classical kernel based methods based on a convex Lipschitz loss function and on a bounded and smooth kernel are stable, if the probability measure P, the regularization parameter λ, and the kernel K may slightly change in a simultaneous manner. Similar results are also given for pairwise learning. Therefore, the topic of this paper is somewhat more general than in classical robust statistics, where usually only the influence of small perturbations of the probability measure P on the estimated function is considered.
| Original language | English |
|---|---|
| Pages (from-to) | 101-118 |
| Journal | Neurocomputing |
| Volume | 289 |
| Online published | 9 Feb 2018 |
| DOIs | |
| Publication status | Published - 10 May 2018 |
Bibliographical note
Full text of this publication does not contain sufficient affiliation information. With consent from the author(s) concerned, the Research Unit(s) information for this record is based on the existing academic department affiliation of the author(s).Research Keywords
- Kernel
- Machine learning
- Regularization
- Robustness
- Stability
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Dive into the research topics of 'Total stability of kernel methods'. Together they form a unique fingerprint.Projects
- 1 Finished
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GRF: Approximation Theory of Incremental PCA and Some Kernel-Based Regularization Schemes for Learning
ZHOU, D. (Principal Investigator / Project Coordinator)
1/01/15 → 12/12/18
Project: Research