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高维变系数线性系统特解的探求
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作者 张学元 《纺织基础科学学报》 1991年第2期135-143,共9页
给出了高维变系数线性齐次系统和高阶变系数线性齐次微分方程具有指数型解的充要条件,提供了探求变系数线性系统指数型解的一个新的实用的有效方法,推广了经典的常系数线性系统的解法.
关键词 高维变系数 线性系统 微分方程 指数型待解
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Concave group methods for variable selection and estimation in high-dimensional varying coefficient models 被引量:1
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作者 YANG GuangRen HUANG Jian ZHOU Yong 《Science China Mathematics》 SCIE 2014年第10期2073-2090,共18页
The varying-coefficient model is flexible and powerful for modeling the dynamic changes of regression coefficients. We study the problem of variable selection and estimation in this model in the sparse, high- dimensio... The varying-coefficient model is flexible and powerful for modeling the dynamic changes of regression coefficients. We study the problem of variable selection and estimation in this model in the sparse, high- dimensional case. We develop a concave group selection approach for this problem using basis function expansion and study its theoretical and empirical properties. We also apply the group Lasso for variable selection and estimation in this model and study its properties. Under appropriate conditions, we show that the group least absolute shrinkage and selection operator (Lasso) selects a model whose dimension is comparable to the underlying mode], regardless of the large number of unimportant variables. In order to improve the selection results, we show that the group minimax concave penalty (MCP) has the oracle selection property in the sense that it correctly selects important variables with probability converging to one under suitable conditions. By comparison, the group Lasso does not have the oracle selection property. In the simulation parts, we apply the group Lasso and the group MCP. At the same time, the two approaches are evaluated using simulation and demonstrated on a data example. 展开更多
关键词 basis expansion group lasso group MCP high-dimensional data SPARSITY oracle property
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