Yin Hujun
School of Electrical and Electronic Engineering, University of Manchester, Manchester, M60 1QD, United Kingdom.
Neural Netw. 2006 Jul-Aug;19(6-7):780-4. doi: 10.1016/j.neunet.2006.05.007. Epub 2006 Jun 6.
The kernel method has become a useful trick and has been widely applied to various learning models to extend their nonlinear approximation and classification capabilities. Such extensions have also recently occurred to the Self-Organising Map (SOM). In this paper, two recently proposed kernel SOMs are reviewed, together with their link to an energy function. The Self-Organising Mixture Network is an extension of the SOM for mixture density modelling. This paper shows that with an isotropic, density-type kernel function, the kernel SOM is equivalent to a homoscedastic Self-Organising Mixture Network, an entropy-based density estimator. This revelation on the one hand explains that kernelising SOM can improve classification performance by acquiring better probability models of the data; but on the other hand it also explains that the SOM already naturally approximates the kernel method.
核方法已成为一种有用的技巧,并已广泛应用于各种学习模型,以扩展其非线性逼近和分类能力。自组织映射(SOM)最近也出现了这样的扩展。本文回顾了最近提出的两种核自组织映射及其与能量函数的联系。自组织混合网络是SOM在混合密度建模方面的扩展。本文表明,对于各向同性的密度型核函数,核自组织映射等同于同方差自组织混合网络,即一种基于熵的密度估计器。这一发现一方面解释了对SOM进行核化可以通过获得更好的数据概率模型来提高分类性能;但另一方面也解释了SOM已经自然地近似于核方法。