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Application of Extension Neural Network for Classification with Incomplete Survey Data

机译:扩展神经网络在不完整调查数据分类中的应用

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Classification is an important theme in data mining, but classification with incomplete survey data is a new subject. Standard neural networks and other techniques reported in the literature do not address the problem of incomplete survey data. So, this paper proposes a novel extension neural network based model of classification for incomplete survey data. The extension neural network is a combination of extension theory and neural network. It uses an extension distance to measure the similarity between data and cluster center. And also the classifier retains information of class membership for each exemplar pattern. In a real world example, the extension neural network would find an exemplar that best matches the test pattern and give the classification result. Compared with other classification techniques, the extension neural network can utilize more information provided by the data with missing values, and reveal the risk of the classification result on the individual observation basis.
机译:分类是数据挖掘中的重要主题,但是具有不完整调查数据的分类是一个新主题。文献中报道的标准神经网络和其他技术并未解决调查数据不完整的问题。因此,本文提出了一种新的基于扩展神经网络的不完整调查数据分类模型。扩展神经网络是扩展理论和神经网络的结合。它使用扩展距离来测量数据与集群中心之间的相似性。分类器还为每个示例模式保留类成员资格的信息。在一个现实世界的例子中,扩展神经网络将找到一个与测试模式最匹配的示例,并给出分类结果。与其他分类技术相比,扩展神经网络可以利用缺失值的数据提供的更多信息,并在个体观察的基础上揭示分类结果的风险。

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