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首页> 外文期刊>The Astrophysical journal >FLEXIBLE AND SCALABLE METHODS FOR QUANTIFYING STOCHASTIC VARIABILITY IN THE ERA OF MASSIVE TIME-DOMAIN ASTRONOMICAL DATA SETS
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FLEXIBLE AND SCALABLE METHODS FOR QUANTIFYING STOCHASTIC VARIABILITY IN THE ERA OF MASSIVE TIME-DOMAIN ASTRONOMICAL DATA SETS

机译:量化大规模时域天文数据集时代随机性的灵活可扩展方法

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We present the use of continuous-time autoregressive moving average (CARMA) models as a method for estimating the variability features of a light curve, and in particular its power spectral density (PSD). CARMA models fully account for irregular sampling and measurement errors, making them valuable for quantifying variability, forecasting and interpolating light curves, and variability-based classification. We show that the PSD of a CARMA model can be expressed as a sum of Lorentzian functions, which makes them extremely flexible and able to model a broad range of PSDs. We present the likelihood function for light curves sampled from CARMA processes, placing them on a statistically rigorous foundation, and we present a Bayesian method to infer the probability distribution of the PSD given the measured light curve. Because calculation of the likelihood function scales linearly with the number of data points, CARMA modeling scales to current and future massive time-domain data sets. We conclude by applying our CARMA modeling approach to light curves for an X-ray binary, two active galactic nuclei, a long-period variable star, and an RR Lyrae star in order to illustrate their use, applicability, and interpretation.
机译:我们目前使用连续时间自回归移动平均(CARMA)模型作为一种估计光曲线(尤其是其功率谱密度(PSD))变异性的方法。 CARMA模型完全解决了不规则的采样和测量误差,使其对于量化可变性,预测和内插光曲线以及基于可变性的分类非常有价值。我们表明,CARMA模型的PSD可以表示为Lorentzian函数的总和,这使它们具有极大的灵活性,并能够对各种PSD进行建模。我们提供了从CARMA流程中采样的光曲线的似然函数,并将其置于统计上严格的基础上,并且我们提出了一种贝叶斯方法来推断给定测量光曲线的PSD的概率分布。由于似然函数的计算与数据点的数量成线性比例关系,因此CARMA建模可扩展至当前和将来的大量时域数据集。最后,我们将CARMA建模方法应用于X射线双星,两个活动银河核,一个长周期可变星和RR天琴星的光曲线,以说明它们的用途,适用性和解释性。

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