...
首页> 外文期刊>The astronomical journal >KEPLER ECLIPSING BINARY STARS. III. CLASSIFICATION OF KEPLER ECLIPSING BINARY LIGHT CURVES WITH LOCALLY LINEAR EMBEDDING
【24h】

KEPLER ECLIPSING BINARY STARS. III. CLASSIFICATION OF KEPLER ECLIPSING BINARY LIGHT CURVES WITH LOCALLY LINEAR EMBEDDING

机译:开普勒超越双星。三,具有局部线性嵌入的开普勒抛弃二进制光曲线的分类

获取原文
           

摘要

We present an automated classification of 2165 Kepler eclipsing binary (EB) light curves that accompanied the second Kepler data release. The light curves are classified using locally linear embedding, a general nonlinear dimensionality reduction tool, into morphology types (detached, semi-detached, overcontact, ellipsoidal). The method, related to a more widely used principal component analysis, produces a lower-dimensional representation of the input data while preserving local geometry and, consequently, the similarity between neighboring data points. We use this property to reduce the dimensionality in a series of steps to a one-dimensional manifold and classify light curves with a single parameter that is a measure of "detachedness" of the system. This fully automated classification correlates well with the manual determination of morphology from the data release, and also efficiently highlights any misclassified objects. Once a lower-dimensional projection space is defined, the classification of additional light curves runs in a negligible time and the method can therefore be used as a fully automated classifier in pipeline structures. The classifier forms a tier of the Kepler EB pipeline that pre-processes light curves for the artificial intelligence based parameter estimator.
机译:我们提出了伴随第二次开普勒数据发布的2165个开普勒日食二进制(EB)光曲线的自动分类。使用局部线性嵌入(一种常规的非线性降维工具)将光曲线分类为形态类型(分离,半分离,过度接触,椭圆形)。该方法与更广泛使用的主成分分析有关,它在保留局部几何图形以及相邻数据点之间的相似性的同时,生成了输入数据的低维表示。我们使用此属性在一系列步骤中将维数减少为一维流形,并使用单个参数对光曲线进行分类,该单个参数是系统“分离”的度量。这种完全自动的分类与从数据发布中手动确定形态的关联性很好,并且还可以有效地突出显示任何错误分类的对象。一旦定义了较低维度的投影空间,其他光曲线的分类将在可忽略的时间内运行,因此该方法可以用作管道结构中的全自动分类器。分类器形成开普勒EB管道的一层,该管道为基于人工智能的参数估计器预处理光曲线。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号