稳健性(进化)
离群值
核(代数)
计算机科学
相似性度量
算法
信号处理
高斯分布
人工智能
模式识别(心理学)
数学
机器学习
数字信号处理
化学
量子力学
基因
组合数学
物理
生物化学
计算机硬件
作者
Badong Chen,Lei Xing,Bin Xu,Haiquan Zhao,Nanning Zheng,José C. Prı́ncipe
标识
DOI:10.1109/tsp.2017.2669903
摘要
Nonlinear similarity measures defined in kernel space, such as correntropy, can extract higher order statistics of data and offer potentially significant performance improvement over their linear counterparts especially in non Gaussian signal processing and machine learning. In this paper, we propose a new similarity measure in kernel space, called the kernel risk-sensitive loss (KRSL), and provide some important properties. We apply the KRSL to adaptive filtering and investigate the robustness, and then develop the MKRSL algorithm and analyze the mean square convergence performance. Compared with correntropy, the KRSL can offer a more efficient performance surface, thereby enabling a gradient-based method to achieve faster convergence speed and higher accuracy while still maintaining the robustness to outliers. Theoretical analysis results and superior performance of the new algorithm are confirmed by simulation.
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