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A Classification Algorithm for Time-domain Novelties in Preparation for LSST Alerts. Application to Variable Stars and Transients Detected with DECam in the Galactic Bulge

机译:时域Noveltize为LSST警报准备时的分类算法。 应用于可变星星和瞬态用银河膨胀中的焊接检测到

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With the advent of the Legacy Survey of Space and Time, time-domain astronomy will be faced with an unprecedented volume and rate of data. Real-time processing of variables and transients detected by such large-scale surveys is critical to identifying the more unusual events and allocating scarce follow-up resources efficiently. We develop an algorithm to identify these novel events within a given population of variable sources. We determine the distributions of magnitude changes (dm ) over time intervals (dt ) for a given passband f , , and use these distributions to compute the likelihood of a test source being consistent with the population or being an outlier. We demonstrate our algorithm by applying it to the DECam multiband time-series data of more than 2000 variable stars identified by Saha et al. in the Galactic Bulge that are largely dominated by long-period variables and pulsating stars. Our algorithm discovers 18 outlier sources in the sample, including a microlensing event, a dwarf nova, and two chromospherically active RS?CVn stars, as well as sources in the blue horizontal branch region of the color–magnitude diagram without any known counterparts. We compare the performance of our algorithm for novelty detection with the multivariate Kernel Density Estimator and Isolation Forest on the simulated PLAsTiCC data set. We find that our algorithm yields comparable results despite its simplicity. Our method provides an efficient way for flagging the most unusual events in a real-time alert-broker system.
机译:随着空间和时间的遗产调查的出现,时域天文学将面临前所未有的数量和数据率。通过这种大规模调查检测到的变量和瞬态的实时处理对于识别更不寻常的事件并有效地分配稀缺后续资源至关重要。我们开发了一种算法,可以在给定的可变源群体中识别这些新颖事件。我们确定给定通带 f的时间间隔( dt)的幅度变化( dm)的分布,并使用这些分布来计算测试源与人口一致的可能性是一个异常值。我们通过将其应用于由Saha等人确定的2000多个可变星的码头多频带时间序列数据来展示我们的算法。在基于长期变量和脉动星的银河凸起。我们的算法在样品中发现了18个异常源,包括微透镜事件,矮化Nova和两个断层活性RS?CVN恒星,以及颜色幅度图的蓝色水平分支区域的源,而没有任何已知的对应物。我们在模拟塑料数据集上与多元核密度估计器和隔离林进行了多元内核密度估计和隔离林的新颖性检测算法的性能。我们发现我们的算法尽管有简单性,但我们的算法产生了可比的结果。我们的方法提供了一种有效的方法,用于在实时警报 - 经纪系统中标记最不寻常的事件。

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