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Autoregressive Times Series Methods for Time Domain Astronomy

机译:时域天文学的自回归时间序列方法

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Celestial objects exhibit a wide range of variability in brightness at different wavebands. Surprisingly, the most common methods for characterizing time series in statistics - parametric autoregressive modeling - is rarely used to interpret astronomical light curves. We review standard ARMA, ARIMA and ARFIMA (autoregressive moving average fractionally integrated) models that treat short-memory autocorrelation, long-memory 1/f^a `red noise', and nonstationary trends. Though designed for evenly spaced time series, moderately irregular cadences can be treated as evenly-spaced time series with missing data. Fitting algorithms are efficient and software implementations are widely available. We apply ARIMA models to light curves of four variable stars, discussing their effectiveness for different temporal characteristics. A variety of extensions to ARIMA are outlined, with emphasis on recently developed continuous-time models like CARMA and CARFIMA designed for irregularly spaced time series. Strengths and weakness of ARIMA-type modeling for astronomical data analysis and astrophysical insights are reviewed.
机译:天体在不同波段的亮度差异很大。令人惊讶的是,在统计中表征时间序列的最常用方法-参数自回归建模-很少用于解释天文光曲线。我们回顾了标准的ARMA,ARIMA和ARFIMA(分数阶自回归移动平均分数)模型,这些模型处理了短内存自相关,长内存1 / f“红噪声”和非平稳趋势。尽管专为时间间隔均匀的时间序列而设计,但不规则的脚踏圈速可以视为缺少数据的时间间隔均匀的时间序列。拟合算法高效,软件实现广泛可用。我们将ARIMA模型应用于四颗变星的光曲线,讨论它们对不同时间特征的有效性。概述了ARIMA的各种扩展,重点是最近开发的连续时间模型,例如为不规则间隔的时间序列设计的CARMA和CARFIMA。回顾了ARIMA型天文学数据分析和天文学洞察力模型的优缺点。

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