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Extensive studies of the neutron star equation of state from the deep learning inference with the observational data augmentation

机译:从深度学习推断与观测数据增强的大规模研究状态从深度学习推断

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A bstract We discuss deep learning inference for the neutron star equation of state (EoS) using the real observational data of the mass and the radius. We make a quantitative comparison between the conventional polynomial regression and the neural network approach for the EoS parametrization. For our deep learning method to incorporate uncertainties in observation, we augment the training data with noise fluctuations corresponding to observational uncertainties. Deduced EoSs can accommodate a weak first-order phase transition, and we make a histogram for likely first-order regions. We also find that our observational data augmentation has a byproduct to tame the overfitting behavior. To check the performance improved by the data augmentation, we set up a toy model as the simplest inference problem to recover a double-peaked function and monitor the validation loss. We conclude that the data augmentation could be a useful technique to evade the overfitting without tuning the neural network architecture such as inserting the dropout.
机译:Bstract我们使用质量和半径的真实观察数据讨论状态(EOS)的中子星形方程的深度学习推断。我们在EOS参数化的传统多项式回归与神经网络方法之间进行定量比较。对于在观察中纳入不确定性的深度学习方法,我们增强了对应于观察不确定性的噪声波动的训练数据。推导的eoss可以容纳弱的一阶阶段转换,我们为可能的一阶区域进行直方图。我们还发现,我们的观察数据增强有一个副产品来驯服过度装备行为。为了检查数据增强的性能,我们将玩具模型设置为最简单的推理问题,以恢复双峰功能并监控验证丢失。我们得出结论,数据增强可能是一种有用的技术,可以在不调整诸如插入辍学的神经网络架构的情况下避开过度装备。

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