The verification of periodicity with the use of recurrent neural networks

N. Miller, P. W. Lucas, Y. Sun, Z. Guo, W. J. Cooper, C. Morris
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Abstract

The ability to automatically and robustly self-verify periodicity present in time-series astronomical data is becoming more important as data sets rapidly increase in size. The age of large astronomical surveys has rendered manual inspection of time-series data less practical. Previous efforts in generating a false alarm probability to verify the periodicity of stars have been aimed towards the analysis of a constructed periodogram. However, these methods feature correlations with features that do not pertain to periodicity, such as light curve shape, slow trends and stochastic variability. The common assumption that photometric errors are Gaussian and well determined is also a limitation of analytic methods. We present a novel machine learning based technique which directly analyses the phase folded light curve for its false alarm probability. We show that the results of this method are largely insensitive to the shape of the light curve, and we establish minimum values for the number of data points and the amplitude to noise ratio.
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利用递归神经网络验证周期性
随着数据集规模的迅速扩大,自动、稳健地自我验证时间序列天文数据中存在的周期性的能力变得越来越重要。大型天文巡天的出现使得人工检查时间序列数据变得不那么实用。以前为验证恒星周期性而产生误报概率的方法主要是对构建的周期图进行分析。然而,这些方法的特点是与光曲线形状、缓慢趋势和随机变率等与周期性无关的特征相关。光度误差是高斯且确定性良好的常见假设也是分析方法的一个局限。我们提出了一种基于机器学习的新技术,可直接分析相位折叠光曲线的误报概率。我们的研究表明,这种方法的结果对光曲线的形状基本不敏感,而且我们还确定了数据点数量和振幅噪声比的最小值。
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