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首页> 外文期刊>IEEE Transactions on Neural Networks >Data classification with radial basis function networks based on a novel kernel density estimation algorithm
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Data classification with radial basis function networks based on a novel kernel density estimation algorithm

机译:基于新型核密度估计算法的径向基函数网络数据分类

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摘要

This work presents a novel learning algorithm for efficient construction of the radial basis function (RBF) networks that can deliver the same level of accuracy as the support vector machines (SVMs) in data classification applications. The proposed learning algorithm works by constructing one RBF subnetwork to approximate the probability density function of each class of objects in the training data set. With respect to algorithm design, the main distinction of the proposed learning algorithm is the novel kernel density estimation algorithm that features an average time complexity of O(nlogn), where n is the number of samples in the training data set. One important advantage of the proposed learning algorithm, in comparison with the SVM, is that the proposed learning algorithm generally takes far less time to construct a data classifier with an optimized parameter setting. This feature is of significance for many contemporary applications, in particular, for those applications in which new objects are continuously added into an already large database. Another desirable feature of the proposed learning algorithm is that the RBF networks constructed are capable of carrying out data classification with more than two classes of objects in one single run. In other words, unlike with the SVM, there is no need to resort to mechanisms such as one-against-one or one-against-all for handling datasets with more than two classes of objects. The comparison with SVM is of particular interest, because it has been shown in a number of recent studies that SVM generally are able to deliver higher classification accuracy than the other existing data classification algorithms. As the proposed learning algorithm is instance-based, the data reduction issue is also addressed in this paper. One interesting observation in this regard is that, for all three data sets used in data reduction experiments, the number of training samples remaining after a na/spl inodot//spl uml/ve data reduction mechanism is applied is quite close to the number of support vectors identified by the SVM software. This paper also compares the performance of the RBF networks constructed with the proposed learning algorithm and those constructed with a conventional cluster-based learning algorithm. The most int-eresting observation learned is that, with respect to data classification, the distributions of training samples near the boundaries between different classes of objects carry more crucial information than the distributions of samples in the inner parts of the clusters.
机译:这项工作提出了一种新颖的学习算法,用于有效构建径向基函数(RBF)网络,该算法可以提供与数据分类应用中的支持向量机(SVM)相同的准确性。所提出的学习算法通过构造一个RBF子网来近似训练数据集中每一类对象的概率密度函数来工作。关于算法设计,所提出的学习算法的主要区别在于新颖的内核密度估计算法,其特征在于平均时间复杂度为O(nlogn),其中n是训练数据集中的样本数。与SVM相比,所提出的学习算法的一个重要优点是,所提出的学习算法通常花费更少的时间来构建具有优化参数设置的数据分类器。此功能对于许多现代应用程序特别重要,特别是对于将新对象连续添加到已经很大的数据库中的那些应用程序。所提出的学习算法的另一个理想特征是,所构建的RBF网络能够在一次运行中对超过两类对象进行数据分类。换句话说,与SVM不同,无需使用诸如一对一或一对一的机制来处理具有两类以上对象的数据集。与SVM的比较特别令人感兴趣,因为在许多最新研究中表明,SVM通常能够提供比其他现有数据分类算法更高的分类精度。由于所提出的学习算法是基于实例的,因此本文还解决了数据约简问题。在这方面,一个有趣的发现是,对于数据缩减实验中使用的所有三个数据集,在应用na / spl inodot // spl uml / ve数据缩减机制后剩余的训练样本数量非常接近于SVM软件识别的支持向量。本文还比较了使用建议的学习算法构建的RBF网络和使用常规的基于聚类的学习算法构建的RBF网络的性能。了解到的最令人感兴趣的观察是,就数据分类而言,不同类对象之间边界附近的训练样本的分布比群集内部的样本分布具有更多的关键信息。

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