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国家自然科学基金(11178021)

作品数:2 被引量:8H指数:2
发文基金:国家自然科学基金国家重点基础研究发展计划更多>>
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Astronomical data fusion tool based on PostgreSQL被引量:2
2016年
With the application of advanced astronomical technologies, equipments and methods all over the world, astronomical observations cover the range from radio, infrared, visible light, ultraviolet, X-ray and gamma-ray bands, and enter into the era of full wavelength astronomy. How to effectively integrate data from different ground- and space-based observation equipments, different observers, different bands and different observation times, requires data fusion technology. In this paper we introduce a cross-match tool that is developed in the Python language, is based on the Postgre SQL database and uses Q3 C as the core index, facilitating the cross-match work of massive astronomical data. It provides four different crossmatch functions, namely:(Ⅰ) cross-match of the custom error range;(Ⅱ) cross-match of catalog errors;(Ⅲ) cross-match based on the elliptic error range;(Ⅳ) cross-match of the nearest neighbor algorithm. The resulting cross-matched set provides a good foundation for subsequent data mining and statistics based on multiwavelength data. The most advantageous aspect of this tool is a user-oriented tool applied locally by users. By means of this tool, users can easily create their own databases, manage their own data and crossmatch databases according to their requirements. In addition, this tool is also able to transfer data from one database into another database. More importantly, it is easy to get started with the tool and it can be used by astronomers without writing any code.
Bo HanYan-Xia ZhangShou-Bo ZhongYong-Heng Zhao
A SVM-kNN method for quasar-star classification被引量:6
2013年
We integrate k-Nearest Neighbors(kNN) into Support Vector Machine(SVM) and create a new method called SVM-kNN.SVM-kNN strengthens the generalization ability of SVM and apply kNN to correct some forecast errors of SVM and improve the forecast accuracy.In addition,it can give the prediction probability of any quasar candidate through counting the nearest neighbors of that candidate which is produced by kNN.Applying photometric data of stars and quasars with spectral classification from SDSS DR7 and considering limiting magnitude error is less than 0.1,SVM-kNN and SVM reach much higher performance that all the classification metrics of quasar selection are above 97.0%.Apparently,the performance of SVM-kNN has slighter improvement than that of SVM.Therefore SVM-kNN is such a competitive and promising approach that can be used to construct the targeting catalogue of quasar candidates for large sky surveys.
PENG NanBoZHANG YanXiaZHAO YongHeng
关键词:光谱分类类星体K-近邻泛化能力
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