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Learn from every mistake! Hierarchical information combination in astronomy

机译:从每一个错误中学习! 在天文学中的分层信息组合

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Throughout the processing and analysis of survey data, a ubiquitous issue nowadays is that we are spoilt for choice when we need to select a methodology for some of its steps. The alternative methods usually fail and excel in different data regions, and have various advantages and drawbacks, so a combination that unites the strengths of all while suppressing the weaknesses is desirable. We propose to use a two-level hierarchy of learners. Its first level consists of training and applying the possible base methods on the first part of a known set. At the second level, we feed the output probability distributions from all base methods to a second learner trained on the remaining known objects. Using classification of variable stars and photometric redshift estimation as examples, we show that the hierarchical combination is capable of achieving general improvement over averaging-type combination methods, correcting systematics present in all base methods, is easy to train and apply, and thus, it is a promising tool in the astronomical "Big Data" era.
机译:在整个调查数据的处理和分析中,现在一方面是无处不在的问题是,当我们需要为某些步骤选择方法时,我们被宠坏了。替代方法通常在不同的数据区域中失败并擅长,并且具有各种优点和缺点,因此可以选择抑制弱缺陷的各种优点的组合。我们建议使用两级学习者的层次结构。它的第一级包括培训并在已知组的第一部分上应用可能的基础方法。在二级,我们将输出概率分布从所有基础方法馈送到在剩余已知对象上培训的第二学习者。使用可变恒星和光度红移估算的分类作为示例,我们表明分层组合能够实现对平均型组合方法的一般改进,纠正所有基础方法中存在的系统,易于训练和应用,因此是天文“大数据”时代的有希望的工具。

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