• Spectroscopy and Spectral Analysis
  • Vol. 29, Issue 6, 1702 (2009)
LI Xiang-ru1、2、3、*, HU Zhan-yi1, ZHAO Yong-heng4, and LI Xiao-ming5
Author Affiliations
  • 1[in Chinese]
  • 2[in Chinese]
  • 3[in Chinese]
  • 4[in Chinese]
  • 5[in Chinese]
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    DOI: Cite this Article
    LI Xiang-ru, HU Zhan-yi, ZHAO Yong-heng, LI Xiao-ming. RVM Supervised Feature Extraction and Seyfert Spectra Classification[J]. Spectroscopy and Spectral Analysis, 2009, 29(6): 1702 Copy Citation Text show less

    Abstract

    With recent technological advances in wide field survey astronomy and implementation of several large-scale astronomical survey proposals (e.g. SDSS, 2dF and LAMOST), celestial spectra are becoming very abundant and rich. Therefore, research on automated classification methods based on celestial spectra has been attracting more and more attention in recent years. Feature extraction is a fundamental problem in automated spectral classification, which not only influences the difficulty and complexity of the problem, but also determines the performance of the designed classifying system. The available methods of feature extraction for spectra classification are usually unsupervised, e.g. principal components analysis (PCA), wavelet transform (WT), artificial neural networks (ANN) and Rough Set theory. These methods extract features not by their capability to classify spectra, but by some kind of power to approximate the original celestial spectra. Therefore, the extracted features by these methods usually are not the best ones for classification. In the present work, the authors pointed out the necessary to investigate supervised feature extraction by analyzing the characteristics of the spectra classification research in available literature and the limitations of unsupervised feature extracting methods. And the authors also studied supervised feature extracting based on relevance vector machine (RVM) and its application in Seyfert spectra classification. RVM is a recently introduced method based on Bayesian methodology, automatic relevance determination (ARD), regularization technique and hierarchical priors structure. By this method, the authors can easily fuse the information in training data, the authors’ prior knowledge and belief in the problem, etc. And RVM could effectively extract the features and reduce the data based on classifying capability. Extensive experiments show its superior performance in dimensional reduction and feature extraction for Seyfert classification.
    LI Xiang-ru, HU Zhan-yi, ZHAO Yong-heng, LI Xiao-ming. RVM Supervised Feature Extraction and Seyfert Spectra Classification[J]. Spectroscopy and Spectral Analysis, 2009, 29(6): 1702
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