LGMLMay 24, 2019

Multi-Kernel Correntropy for Robust Learning

arXiv:1905.10115v241 citations
Originality Incremental advance
AI Analysis

This is an incremental improvement for robust learning in machine learning and signal processing.

The authors tackled the problem of improving robustness to outliers in machine learning by proposing multi-kernel correntropy, where each Gaussian kernel component can have a different center, and experimental results showed it outperformed existing correntropy-based methods.

As a novel similarity measure that is defined as the expectation of a kernel function between two random variables, correntropy has been successfully applied in robust machine learning and signal processing to combat large outliers. The kernel function in correntropy is usually a zero-mean Gaussian kernel. In a recent work, the concept of mixture correntropy (MC) was proposed to improve the learning performance, where the kernel function is a mixture Gaussian kernel, namely a linear combination of several zero-mean Gaussian kernels with different widths. In both correntropy and mixture correntropy, the center of the kernel function is, however, always located at zero. In the present work, to further improve the learning performance, we propose the concept of multi-kernel correntropy (MKC), in which each component of the mixture Gaussian kernel can be centered at a different location. The properties of the MKC are investigated and an efficient approach is proposed to determine the free parameters in MKC. Experimental results show that the learning algorithms under the maximum multi-kernel correntropy criterion (MMKCC) can outperform those under the original maximum correntropy criterion (MCC) and the maximum mixture correntropy criterion (MMCC).

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