Iterative feature weighting for identification of relevant features with radial basis function networks

B. Duan, Y. Pao
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引用次数: 3

Abstract

This paper reports on advances in identification of relevant features through iterative feature weighting with radial basis function networks. It proceeds with a set of feature weights to scale the data which are used to train a radial basis function network model. Then from the learned model, the feature weights are updated via one-step gradient descent. The updated feature weights are then fed back to build a new model. The procedure continues until we find a satisfactory model and the feature weights converge. Experimental results for some benchmark datasets show that the approach is efficient and effective for selecting relevant features for data modeling and classification tasks.
基于径向基函数网络的特征迭代加权识别
本文报道了利用径向基函数网络迭代特征加权识别相关特征的研究进展。然后利用一组特征权值对训练径向基函数网络模型的数据进行缩放。然后根据学习到的模型,通过一步梯度下降法更新特征权重。然后将更新后的特征权重反馈给新模型。这个过程一直持续下去,直到我们找到一个满意的模型,并且特征权值收敛。在一些基准数据集上的实验结果表明,该方法能够有效地为数据建模和分类任务选择相关特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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