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Extracting galactic structure parameters from multivariated density estimationMultivariate statistical analysis, including includes cluster analysis (unsupervised classification), discriminant analysis (supervised classification) and principle component analysis (dimensionlity reduction method), and nonparameter density estimation have been successfully used to search for meaningful associations in the 5-dimensional space of observables between observed points and the sets of simulated points generated from a synthetic approach of galaxy modelling. These methodologies can be applied as the new tools to obtain information about hidden structure otherwise unrecognizable, and place important constraints on the space distribution of various stellar populations in the Milky Way. In this paper, we concentrate on illustrating how to use nonparameter density estimation to substitute for the true densities in both of the simulating sample and real sample in the five-dimensional space. In order to fit model predicted densities to reality, we derive a set of equations which include n lines (where n is the total number of observed points) and m (where m: the numbers of predefined groups) unknown parameters. A least-square estimation will allow us to determine the density law of different groups and components in the Galaxy. The output from our software, which can be used in many research fields, will also give out the systematic error between the model and the observation by a Bayes rule.
Document ID
19940017985
Acquisition Source
Legacy CDMS
Document Type
Conference Paper
Authors
Chen, B.
(Observatoire de Strasbourg France)
Creze, M.
(Observatoire de Strasbourg France)
Robin, A.
(Observatoire de Besancon France)
Bienayme, O.
(Observatoire de Besancon France)
Date Acquired
September 6, 2013
Publication Date
January 1, 1992
Publication Information
Publication: NASA, Washington, Second Annual Conference on Astronomical Data Analysis Software and Systems. Abstracts
Subject Category
Statistics And Probability
Accession Number
94N22458
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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