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Selecting neural network architectures via the prediction risk: application to corporate bond rating prediction

机译:通过预测风险选择神经网络架构:应用于企业债券评级预测

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The notion of generalization can be defined precisely as the prediction risk, the expected performance of an estimator on new observations. The authors propose the prediction risk as a measure of the generalization ability of multi-layer perceptron networks and use it to select the optimal network architecture. The prediction risk must be estimated from the available data. The authors approximate the prediction risk by v-fold cross-validation and asymptotic estimates of generalized cross-validation or H. Akaike's (1970) final prediction error. They apply the technique to the problem of predicting corporate bond ratings. This problem is very attractive as a case study, since it is characterized by the limited availability of the data and by the lack of complete a priori information that could be used to impose a structure to the network architecture.
机译:可以精确地定义泛化的概念作为预测风险,估算器对新观察的预期性能。作者提出了预测风险作为多层Perceptron网络的泛化能力的量度,并使用它来选择最佳网络架构。必须从可用数据估算预测风险。作者用V倍交叉验证和广义交叉验证的交叉验证和渐近估计或H.Akaike(1970)的最终预测误差的预测风险近似。他们将技术应用于预测公司债券评级的问题。此问题是非常有吸引力的作为案例研究,因为它的特征在于数据的可用性有限,并且通过缺乏可用于将结构强加到网络架构的先验信息。

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