基于统计特征集的神经网络预测

Jonathan Michel, G. Mirchandani, S. Wald
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引用次数: 3

摘要

作者报告了几种用于特征选择的技术,用于开发预测头部外伤患者恢复的预后工具。对数据库进行特征检查,并使用统计技术提取特征。基于统计技术的特征选择,建立了人工神经网络模型。这些模型经过了训练和测试。结果表明,人工神经网络的泛化能力取决于三个因素:数据表示方法、结果类别的数量和数据集中的特定特征。在所有情况下,人工神经网络架构保持不变。在使用的统计技术中,应用于RA(回归分析)的向后选择和应用于LDA(线性判别分析)特征模型的逐步选择产生了最好的泛化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prognosis with neural networks using statistically based feature sets
The authors report on several techniques for feature selection utilized in the development of a prognostic tool of predicting recovery for patients with head trauma injuries. The database was examined for features, which were extracted using statistical techniques. ANN (artificial neural network) models were built based on the feature selection of the statistical techniques. These models were trained and tested. Results showed that the ability of the ANN to generalize was dependent on three factors: method of data representation, number of outcome classes, and specific features in the data set. The ANN architecture was kept constant for all the cases. Of the statistical techniques used, the backward selection applied to RA (regression analysis) and stepwise selection applied to LDA (linear disciminant analysis) feature models yielded the best generalizations.<>
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