摘要
Kernel adaptive filters (KAFs) are a family of powerful online kernel learning methods that can learn nonlinear and nonstationary systems efficiently. Most of the existing KAFs are obtained by minimizing the well-known mean square error (MSE). The MSE criterion is computationally simple and very easy to implement but may suffer from a lack of robustness to non-Gaussian noises. To deal with the non-Gaussian noises robustly, the optimization criteria must go beyond the second-order framework. Recently, the correntropy, a novel similarity measure that involves all even-order moments, has been shown to be very robust to the presence of heavy-tailed non-Gaussian noises. A generalized correntropy has been proposed in a recent study. Combining the KAFs with the maximum correntropy criterion (MCC) provides a unified and efficient approach to handle nonlinearity, nonstationarity and non-Gaussianity. The major goal of this chapter is to briefly characterize such an approach. The KAFs under the generalized MCC will be investigated, and some simulation results will be presented.
| 源语言 | 英语 |
|---|---|
| 主期刊名 | Adaptive Learning Methods for Nonlinear System Modeling |
| 出版商 | Elsevier |
| 页 | 105-126 |
| 页数 | 22 |
| ISBN(电子版) | 9780128129760 |
| ISBN(印刷版) | 9780128129777 |
| DOI | |
| 出版状态 | 已出版 - 1 1月 2018 |
学术指纹
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