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Modeling Lightcurves for Improved Classification of Astronomical Objects

机译:建模灯具改进了天文对象的分类

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摘要

Many synoptic surveys are observing large parts of the sky multiple times. The resulting time series of light measurements, called lightcurves, provide a wonderful window to the dynamic nature of the Universe. However, there are many significant challenges in analyzing these lightcurves. We describe a modeling-based approach using Gaussian process regression for generating critical measures for the classification of such lightcurves. This method has key advantages over other popular nonparametric regression methods in its ability to deal with censoring, a mixture of sparsely and densely sampled curves, the presence of annual gaps caused by objects not being visible throughout the year from a given position on Earth and known but variable measurement errors. We demonstrate that our approach performs better by showing it has a higher correct classification rate than past methods popular in astronomy. Finally, we provide future directions for use in sky-surveys that are getting even bigger by the day. (C) 2016 Wiley Periodicals, Inc. Statistical Analysis and Data Mining: The ASA Data Science Journal 9: 1-11, 2016
机译:许多舞台调查是多次观察天空的大部分。由此产生的时间序列,称为LightCurves,为宇宙的动态性提供了一个美妙的窗口。然而,在分析这些LiftCurves时存在许多重大挑战。我们描述了一种基于模型的方法,使用高斯工艺回归来产生这种灯罩的分类的关键措施。该方法具有与其他流行的非参数回归方法的关键优势,其能够处理审查的能力,稀疏和密集的采样曲线的混合物,由于在地球上的给定位置而未在全年中不可见的物体引起的年度差距的存在但是可变测量错误。我们展示了我们的方法通过表明它具有比在天文学中流行的过去的方法更高的正确分类率更高。最后,我们提供了未来的使用方向,用于天空调查,这在一天中甚至更大。 (c)2016 Wiley期刊,Inc。统计分析和数据挖掘:ASA数据科学期刊9:1-11,2016

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