类发现的径向基神经网络

A. K. Behera, J. P. Mohanty, C. S. K. Dash, S. Dehuri
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引用次数: 0

摘要

径向基函数神经网络的非迭代结构使其在分类任务中越来越受欢迎。随着训练数据集的增长,模式层也随之增长。没有类别标签的数据的空前增长,对从事数据科学、大数据分析等工作的研究人员来说是一个挑战。虽然有文献证明许多算法处理没有类标签的数据。然而,基于神经网络的、具有径向基神经网络特殊特征的类标记挖掘算法却非常罕见。本文提出了一种结合径向基函数神经网络(RBFN)和自组织特征映射(SOFM)的类发现算法。我们选取了一些带有类标签的数据集作为实验数据集。在网络的训练阶段,训练实例不使用类标签。在测试阶段,通过结合预测的类标签和实际的类标签来验证它们。结果表明,该算法可以作为类发现的一种替代方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Radial Basis Neural Networks for Class Discovery
The non-iterative structure of radial basis function neural networks makes them more appealing for classification tasks decade after decade. In line with the growth of the training data set, the pattern layer also grows. The unprecedented growth of data with no class labels is becoming a challenge for researchers who are working in data science, big data analysis, etc. Although there is literature witnessed for many algorithms to handle data with no class label. However, neural network-based algorithms with a special characteristic of radial basis neural networks for uncovering class labels are very rare. In this paper, we propose a novel class discovery algorithm that combines the best features of radial basis function neural networks (RBFN) and self-organizing feature map (SOFM). We have taken a few datasets with class label for our experimental work. In the training phase of the network, the training instances are used without class labels. In the test phase, they are validated by combining the predicted class labels with their actual class label. The result shows that the proposed algorithm can be treated as an alternative method for class discovery.
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