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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >A general framework for neural network models on censored survival data.
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A general framework for neural network models on censored survival data.

机译:用于审查生存数据的神经网络模型的通用框架。

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摘要

Flexible parametric techniques for regression analysis, such as those based on feed forward artificial neural networks (FFANNs), can be useful for the statistical analysis of censored time data. These techniques are of particular interest for the study of the outcome dependence from several variables measured on a continuous scale, since they allow for the detection of complex non-linear and non-additive effects. Few efforts have been made until now to account for censored times in FFANNs. In the attempt to fill this gap, specific error functions and data representation will be introduced for multilayer perceptron and radial basis function extensions of generalized linear models for survival data.
机译:灵活的回归分析参数技术,例如基于前馈人工神经网络(FFANN)的参数技术,对于审查时间数据的统计分析很有用。这些技术对于研究连续测量的多个变量对结果的依赖性特别有用,因为它们可以检测复杂的非线性和非加性效应。到目前为止,几乎没有做出任何努力来说明FFANN中的审查时间。为了弥补这一空白,将针对生存数据的广义线性模型的多层感知器和径向基函数扩展引入特定的误差函数和数据表示形式。

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