Abstract
Information theoretic learning is a learning paradigm that uses concepts of entropies and divergences from information theory. A variety of signal processing and machine learning methods fall into this framework. Minimum error entropy principle is a typical one amongst them. In this paper, we study a kernel version of minimum error entropy methods that can be used to find nonlinear structures in the data. We show that the kernel minimum error entropy can be implemented by kernel based gradient descent algorithms with or without regularization. Convergence rates for both algorithms are deduced.
| Original language | English |
|---|---|
| Article number | 105518 |
| Journal | Journal of Approximation Theory |
| Volume | 263 |
| Online published | 29 Dec 2020 |
| DOIs | |
| Publication status | Published - Mar 2021 |
Research Keywords
- Gradient descent algorithm
- Information theoretic learning
- Kernel method
- Minimum error entropy
- Regularization
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Dive into the research topics of 'Kernel gradient descent algorithm for information theoretic learning'. Together they form a unique fingerprint.Projects
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GRF: Wavelet Analysis of Convolutional Deep Neural Networks and Approximation of Radial Functions
ZHOU, D. (Principal Investigator / Project Coordinator)
1/01/19 → 6/12/22
Project: Research
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