題名: | Pattern Classification using Robust RBF Networks |
作者: | Li, Sheng-Tun |
關鍵字: | Redial basis function networks Robust learning Breakdown point Least trimmed squares Robust regression |
期刊名/會議名稱: | 1996 ICS會議 |
摘要: | Radial basis function networks (RBFNs) have recently attracted interest, because of their advantages over multilayer perceptrons as they are universal approximators but achieve faster convergence since only one layer of weights is required. The least squares method is the most popularly used in estimating the synaptic weights which provides optimal results if the underling error distribution is Gaussian. However, the generalization performance of the networks deteriorates for realistic noise whose distribution is either unknown or non-Gaussian;in particular, it becomes very bad if outliers are present. In this paper we propose a positive-breakdown learning algorithm for RBFNs by applying the breakdown point approach in robust regression such that any assumptions about or estimation of the error distribution are avoidable. The expense of losing efficiency in the presence of Gaussian noise and the problem of local minima for most robust estimators has also been taken into account. The resulting network is shown to be highly robust and stable against a high fraction of outliers as well as small perturbations. |
日期: | 2006-10-25T01:10:48Z |
分類: | 1996年 ICS 國際計算機會議 |
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ce07ics001996000075.pdf | 443.46 kB | Adobe PDF | 檢視/開啟 |
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