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Lazy learning in radial basis neural networks: A way of achieving more accurate models

机译:径向基神经网络中的懒惰学习:一种实现更精确模型的方法

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摘要

Radial Basis Neural Networks have been successfully used in a large number of applications having in its rapid convergence time one of its most important advantages. However, the level of generalization is usually poor and very dependent on the quality of the training data because some of the training patterns can be redundant or irrelevant. In this paper, we present a learning method that automatically selects the training patterns more appropriate to the new sample to be approximated. This training method follows a lazy learning strategy, in the sense that it builds approximations centered around the novel sample. The proposed method has been applied to three different domains an artificial regression problem and two time series prediction problems. Results have been compared to standard training method using the complete training data set and the new method shows better generalization abilities.
机译:径向基神经网络已经以其快速收敛的时间是其最重要的优势之一,已成功地用于众多应用中。但是,归纳水平通常很差,并且非常依赖于训练数据的质量,因为某些训练模式可能是多余的或无关紧要的。在本文中,我们提出了一种学习方法,该方法可以自动选择更适合要近似的新样本的训练模式。这种训练方法遵循懒惰的学习策略,从某种意义上说,它建立了围绕新样本的近似值。所提出的方法已应用于三个不同领域的人工回归问题和两个时间序列预测问题。使用完整的训练数据集,将结果与标准训练方法进行了比较,新方法显示了更好的泛化能力。

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