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In-training and post-training generalization methods: The case of ppar — α and ppar — γ agonists

机译:训练中和训练后的概括方法:ppar-α和ppar-γ激动剂的情况

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In this paper, the effects of regularization on the generalization capabilities of a neural network model are analyzed. We compare the performance of Levenberg-Marquardt and Bayesian Regularization algorithms with and without post-training regularization. We show that although Bayesian Regularization performs slightly better than Levenberg-Marquardt, the model trained using Levenberg-Marquardt holds more information about the data set which by proper post-processing regularization can be extracted. This post-processing regularization imposes smoothness and similarity.
机译:在本文中,分析了正则化对神经网络模型泛化能力的影响。我们比较了带和不带训练后正则化的Levenberg-Marquardt和贝叶斯正则化算法的性能。我们显示,尽管贝叶斯正则化的性能比Levenberg-Marquardt略好,但使用Levenberg-Marquardt训练的模型拥有有关数据集的更多信息,可以通过适当的后处理正则化来提取该信息。此后处理正则化强加了平滑性和相似性。

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