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Classification with incomplete survey data: a Hopfield neural network approach

机译:使用不完整的调查数据进行分类:Hopfield神经网络方法

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摘要

Survey data are often incomplete. Classification with incomplete survey data is a new subject. This study proposes a Hopfield neural network based model of classification for incomplete survey data. Using this model, an incomplete pattern is translated into fuzzy patterns. These fuzzy patterns, along with patterns without missing values, are then used as the exemplar set for teaching the Hopfield neural network. The classifier also retains information of fuzzy class membership for each exemplar pattern. When presenting a test sample, the neural network would find an exemplar that best matches the test pattern and give the classification result. Compared with other classification techniques, the proposed method 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:调查数据通常不完整。具有不完整调查数据的分类是一个新主题。这项研究提出了一种基于Hopfield神经网络的不完整调查数据分类模型。使用此模型,将不完整的模式转换为模糊模式。然后将这些模糊模式以及没有缺失值的模式用作教授Hopfield神经网络的示例集。分类器还为每个示例模式保留模糊类成员资格的信息。当提供测试样本时,神经网络会找到与测试模式最匹配的样本并给出分类结果。与其他分类技术相比,该方法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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