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An incremental training method for the probabilistic RBF network

机译:概率RBF网络的增量训练方法

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摘要

The probabilistic radial basis function (PRBF) network constitutes a probabilistic version of the RBF network for classification that extends the typical mixture model approach to classification by allowing the sharing of mixture components among all classes. The typical learning method of PRBF for a classification task employs the expectation-maximization (EM) algorithm and depends strongly on the initial parameter values. In this paper, we propose a technique for incremental training of the PRBF network for classification. The proposed algorithm starts with a single component and incrementally adds more components at appropriate positions in the data space. The addition of a new component is based on criteria for detecting a region in the data space that is crucial for the classification task. After the addition of all components, the algorithm splits every component of the network into subcomponents, each one corresponding to a different class. Experimental results using several well-known classification data sets indicate that the incremental method provides solutions of superior classification performance compared to the hierarchical PRBF training method. We also conducted comparative experiments with the support vector machines method and present the obtained results along with a qualitative comparison of the two approaches.
机译:概率径向基函数(PRBF)网络构成了用于分类的RBF网络的概率版本,该模型通过允许所有类别之间共享混合成分将典型的混合模型方法扩展到分类。用于分类任务的PRBF的典型学习方法采用期望最大化(EM)算法,并且强烈依赖于初始参数值。在本文中,我们提出了一种用于分类的PRBF网络的增量训练技术。所提出的算法从单个组件开始,然后在数据空间中的适当位置逐渐增加更多组件。新组件的添加基于用于检测数据空间中对于分类任务至关重要的区域的标准。在添加了所有组件之后,该算法将网络的每个组件拆分为子组件,每个子组件对应于一个不同的类。使用几个众所周知的分类数据集的实验结果表明,与分层PRBF训练方法相比,增量方法提供了更好的分类性能解决方案。我们还使用支持向量机方法进行了比较实验,并给出了获得的结果以及两种方法的定性比较。

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