网格聚类通过深度学习对频谱大数据进行分析

Chen Shuxin, Sun Weimin
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引用次数: 1

摘要

随着互联网+大数据科学信息化时代的迅猛发展。寻求特殊的、未知的物体是人类探索宇宙奥秘在宇宙中追求的目标。大数据挖掘得到的频谱是比较复杂的数据,维数高,维数之间的相关性不强,但容易引入噪声或丢失数据。因此,计量数据的处理要困难得多。本文研究了基于高分辨率光谱参数的LAMOST数据释放恒星光谱。利用R语言RFITSIO软件包对频谱大数据进行图形化分析。深度学习分析从大数据中提取信息,发现新的知识和未知的离群数据。现在FITS格式的光谱大数据信息上升到107级数据。由于导入的大数据中含有大量冗余信息,因此对恒星光谱的全谱信号进行充分利用多变量统计分析,对具有线指数特征的聚类数据进行聚类。利用Lick线索引作为光谱特征,采用深度学习的K-means均值算法对光谱数据进行聚类。实验表明,物理相关性强的数据有效且快速,利用数据的特征完成了光谱测量中大数据特征的聚类离群值分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Grid clustering analysis the big data of spectrum by deep learning
With the Internet plus big data science information era increasing rapidly. To seek special and unknown objects is the human exploration of the mystery of the universe to pursue the goal in the universe. The spectrum by the big data mining are the fairly complex data, the dimension is high, and the correlation between the dimensions is not strong, but it is easy to introduce noise or the missing data. So it is much more difficult to deal with metering data. This article investigates the LAMOST data release star spectrum based on the high resolution spectral parameters. The RFITSIO software package of R language is used to graphically analyze the big data of the spectrum. The deep learning analysis extracts the information from the large data with finding the new knowledge and the unknown outlier data. Now the FITS format spectral large data information rise to 107 levels of data. Since the big data is imported with a large amount of redundant information, the full spectrum signal of the star spectrum making the full use of Multivariable Statistical Analysis to cluster clustering data characterized by line index. Using the Lick line index as the spectral feature, the spectral data are clustered by the K-means mean algorithm of deep learning. Experiments show that the data with strong physical correlation are valid and fast, the clustering outlier analysis of the big data feature in the spectral survey are completed with the characteristics of the data.
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