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Feature Selection Applied to Data from the Sloan Digital Sky Survey

机译:要素选择应用于Sloan Digital Sky Survey中的数据

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摘要

In recent years there has been an explosion in the rate of acquisition of astronomical data. The analysis of astronomical data presents unprecedented opportunities and challenges for data mining in tasks, such as clustering, object discovery and classification. In this work, we address the feature selection problem in classification of photometric and spectroscopic data collected from the SDSS survey. We present a comparison of five feature selection algoritms: best first (BF), scatter search (SS), genetic algorithm (GA), best incremental ranked subset (BI) and best agglomerative ranked subset (BA). Up to now all these strategies were first applied to this paper to study relevant features in SDSS data.
机译:近年来,天文数据的获取率呈爆炸式增长。天文学数据的分析为任务中的数据挖掘(如聚类,对象发现和分类)提出了前所未有的机遇和挑战。在这项工作中,我们解决了从SDSS调查收集的光度和光谱数据分类中的特征选择问题。我们对五个特征选择算法进行了比较:最佳优先(BF),散点搜索(SS),遗传算法(GA),最佳增量排名子集(BI)和最佳聚集排名子集(BA)。到目前为止,所有这些策略都首先应用于本文,以研究SDSS数据中的相关特征。

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