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基于随机森林的激变变星候选体的数据挖掘
作者姓名:Jiang B  Luo AL  Zhao YH
作者单位:中国科学院国家天文台;山东大学威海分校机电与信息工程学院;中国科学院研究生院
基金项目:国家自然科学基金项目(10973021,11078013)资助
摘    要:提出一种适用于在郭守敬望远镜海量光谱中自动、快速筛选激变变星的方法。利用已证认的激变变星光谱作为模板,通过随机森林分类训练,得到一个分类模型,该模型给出了各个波长对应流量的重要性排序,可根据该排序进行降维并用于激变变星判别,结果作为反馈进一步丰富模板库。实验中共发现了16个新的激变变星候选体,表明了该方法的可行性。

关 键 词:激变变星  数据挖掘  随机森林  郭守敬望远镜

Data mining approach to cataclysmic variables candidates based on random forest algorithm
Jiang B,Luo AL,Zhao YH.Data mining approach to cataclysmic variables candidates based on random forest algorithm[J].Spectroscopy and Spectral Analysis,2012,32(2):510-513.
Authors:Jiang Bin  Luo A-li  Zhao Yong-heng
Institution:National Astronomical Observatories, Chinese Academy of Sciences, Beijing 100012, China. jiangbin@sdu.edu.cn
Abstract:An automatic and efficient method for cataclysmic variables candidates is presented in the present paper. The identified CVs were selected as templates. A model was constructed by random forest algorithm with templates and random selected spectra. Wavelength ranking was described by the model and the classifier was constructed afterwards. Most of the non-candidates were excluded by the method. Template matching strategy was used to identify the final candidates which were analyzed to complement the templates as feedback. 16 new CVs candidates were found in the experiment that shows that our approach to finding special celestial bodies can be feasible in LAMOST.
Keywords:Cataclysmic variables  Data mining  Random forest  Lamost
本文献已被 CNKI PubMed 等数据库收录!
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