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PELICAN: deeP architecturE for the LIght Curve ANalysis

机译:PELICAN:轻曲线分析的深度架构师

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We developed a deeP architecturE for the LIght Curve ANalysis (PELICAN) for the characterization and the classification of supernovae light curves. It takes light curves as input, without any additional features. PELICAN can deal with the sparsity and the irregular sampling of light curves. It is designed to remove the problem of non-representativeness between the training and test databases coming from the limitations of the spectroscopic follow-up. We applied our methodology on different supernovae light curve databases. First, we tested PELICAN on the Supernova Photometric Classification Challenge for which we obtained the best performance ever achieved with a non-representative training database, by reaching an accuracy of 0.811. Then we tested PELICAN on simulated light curves of the LSST Deep Fields for which PELICAN is able to detect 87.4% of supernovae Ia with a precision higher than 98%, by considering a non-representative training database of 2k light curves. PELICAN can be trained on light curves of LSST Deep Fields to classify light curves of the LSST main survey, which have a lower sampling rate and are more noisy. In this scenario, it reaches an accuracy of 96.5% with a training database of 2k light curves of the Deep Fields. This constitutes a pivotal result as type Ia supernovae candidates from the main survey might then be used to increase the statistics without additional spectroscopic follow-up. Finally we tested PELICAN on real data from the Sloan Digital Sky Survey. PELICAN reaches an accuracy of 86.8% with a training database composed of simulated data and a fraction of 10% of real data. The ability of PELICAN to deal with the different causes of non-representativeness between the training and test databases, and its robustness against survey properties and observational conditions, put it in the forefront of light curve classification tools for the LSST era.
机译:我们为光度曲线分析(PELICAN)开发了一种deeP架构,用于对超新星光曲线进行表征和分类。它以灯光曲线作为输入,没有任何其他功能。 PELICAN可以处理光曲线的稀疏性和不规则采样。它旨在消除由于光谱跟踪的局限性而导致的训练数据库和测试数据库之间的不代表性问题。我们将我们的方法应用于不同的超新星光曲线数据库。首先,我们在超新星光度分类挑战赛上对PELICAN进行了测试,通过非代表性的训练数据库,它达到了0.811的精确度,从而获得了有史以来的最佳性能。然后,我们在LSST深场的模拟光曲线上测试了PELICAN,通过考虑2k光曲线的非代表性训练数据库,PELICAN能够检测到87.4%的超新星Ia,其精度高于98%。可以在LSST深场的光曲线上对PELICAN进行训练,以对LSST主要勘测的光曲线进行分类,这些采样率较低且噪声较大。在这种情况下,使用2k深场光曲线的训练数据库可以达到96.5%的精度。这构成了关键的结果,因为主要调查中的Ia类超新星候选者可能随后被用于增加统计量,而无需进行额外的光谱随访。最后,我们在Sloan Digital Sky Survey的真实数据上测试了PELICAN。 PELICAN的培训数据库由模拟数据和真实数据的十分之一组成,其准确性达到86.8%。 PELICAN处理培训和测试数据库之间不具代表性的不同原因的能力以及其对调查属性和观测条件的鲁棒性,使其在LSST时代的光曲线分类工具中处于最前沿。

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