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Estimation on principal component of multi-collinearity Gauss-Markov model based on minimum description length
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作者 shi {1.(1. 2) (1. shandong university of technology, zibo 255049, china 2. Key Laboratory of Geospace Environment and Geodesy, Ministry of Education, Wuhan university, Wuhan 430079, china) 《中国有色金属学会会刊:英文版》 CSCD 2005年第S1期153-155,共3页
Gauss-Markov model is frequently used in data analysis; the analysis and estimation of its parameters is always a hot issue. Based on the information theory and from the viewpoint of optimal information on description... Gauss-Markov model is frequently used in data analysis; the analysis and estimation of its parameters is always a hot issue. Based on the information theory and from the viewpoint of optimal information on description—minimum description length, this paper discusses a case: where there is multi-collinearity in the coefficient matrix, principal component estimation is used to estimate and select the original parameters, so as to reduce its multi-collinearity and improve its credibility. From the viewpoint of minimum description length, this paper discusses the approach of selecting principal components and uses this approach to solve a practical problem. 展开更多
关键词 minimum DESCRIPTION LENGTH Gauss-Markov MODEL multi-collinearity principal COMPONENT ESTIMATION
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