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首页> 外文期刊>Statistics in medicine >A new approach to training back-propagation artificial neural networks: empirical evaluation on ten data sets from clinical studies.
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A new approach to training back-propagation artificial neural networks: empirical evaluation on ten data sets from clinical studies.

机译:训练反向传播人工神经网络的新方法:对来自临床研究的十个数据集进行实证评估。

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摘要

We present a new approach to training back-propagation artificial neural nets (BP-ANN) based on regularization and cross-validation and on initialization by a logistic regression (LR) model. The new approach is expected to produce a BP-ANN predictor at least as good as the LR-based one. We have applied the approach to ten data sets of biomedical interest and systematically compared BP-ANN and LR. In all data sets, taking deviance as criterion, the BP-ANN predictor outperforms the LR predictor used in the initialization, and in six cases the improvement is statistically significant. The other evaluation criteria used (C-index, MSE and error rate) yield variable results, but, on the whole, confirm that, in practical situations of clinical interest, proper training may significantly improve the predictive performance of a BP-ANN.
机译:我们提出了一种基于正则化和交叉验证以及通过逻辑回归(LR)模型进行初始化的训练反向传播人工神经网络(BP-ANN)的新方法。预期新方法将产生至少与基于LR的BP-ANN预测器一样好。我们已经将该方法应用于生物医学兴趣的十个数据集,并系统地比较了BP-ANN和LR。在所有数据集中,以偏差为准则,BP-ANN预测器的性能优于初始化中使用的LR预测器,在六种情况下,改进具有统计学意义。所使用的其他评估标准(C指数,MSE和错误率)产生可变的结果,但总的来说,证实在临床感兴趣的实际情况下,适当的训练可能会大大改善BP-ANN的预测性能。

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