论文标题
使用尺寸降低识别和修复银河系特性中的灾难性错误
Identifying and Repairing Catastrophic Errors in Galaxy Properties Using Dimensionality Reduction
论文作者
论文摘要
我们对星系演化的理解是从旨在通过观察到典型星系所需的最低量来最大程度地提高效率的大型调查得出的。但是,对于每个调查中的几个星系,这些观察结果不足,而衍生的特性在灾难性上可能是错误的。此外,目前很难或不可能确定哪些对象失败了,因此这些对象污染了所有星系性能的研究。我们开发了一种新的方法来识别这些对象,通过将天文代码与尺寸降低算法T-SNE相结合,该代码将类似的对象分组以确定哪些推断性属性不合适。该方法为COSMOS目录提供了改进,该目录已经使用了现有技术来清除灾难性错误,因此应提高大型目录的质量以及对大型红移错误敏感的任何研究。
Our understanding of galaxy evolution is derived from large surveys designed to maximize efficiency by only observing the minimum amount needed to infer properties for a typical galaxy. However, for a few percent of galaxies in every survey, these observations are insufficient and derived properties can be catastrophically wrong. Further, it is currently difficult or impossible to determine which objects have failed, so that these contaminate every study of galaxy properties. We develop a novel method to identify these objects by combining the astronomical codes which infer galaxy properties with the dimensionality reduction algorithm t-SNE, which groups similar objects to determine which inferred properties are out of place. This method provides an improvement for the COSMOS catalog, which already uses existing techniques for catastrophic error removal, and therefore should improve the quality of large catalogs and any studies which are sensitive to large redshift errors.