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1.
半参数模型的经验欧氏似然估计的大样本性质   总被引:9,自引:3,他引:6  
罗旭 《应用概率统计》1994,10(4):344-352
本文证明了半参数模型的经验欧氏似然估计的强相合性和渐近正态性,还证明了经验欧氏似然比统计量的渐近x~2分布性,最后给出了几个例子。  相似文献   

2.
对于非线性半参数回归模型的估计问题,利用经验似然方法,给出了回归系数,光滑函数以及误差方差的最大经验似然估计.在一定条件下证明了所得估计量的渐近正态性和相合性.  相似文献   

3.
罗旭 《应用概率统计》1997,13(2):133-141
在本文中,我们证明了两样本半参数模型的经验欧氏似然估计的相合性和渐近正态性,也证明了两样本半参数模型的经验欧氏似然比统计量的渐近x2分布性,最后给出了两个例子.  相似文献   

4.
于洋  侯文 《经济数学》2020,37(3):221-226
讨论了响应变量为单参数指数族且在零点处膨胀的广义线性模型的大样本性质,对其参数进行了极大似然估计,给出了一些正则条件.基于所提出的正则条件,证明了模型参数极大似然估计的相合性与渐近正态性.  相似文献   

5.
用拟极大似然估计方法研究了误差为AR(1)时间序列的半参数回归模型,得到了参数及非参数的拟极大似然估计量,并研究了它们的渐近分布.  相似文献   

6.
核实数据下非线性半参数EV模型的经验似然推断   总被引:6,自引:0,他引:6  
薛留根 《数学学报》2006,49(1):145-154
考虑带有协变量误差的非线性半参数模型,借助于核实数据,本文构造了未知参数的三种经验对数似然比统计量,证明了所提出的统计量具有渐近X2分布,此结果可以用来构造未知参数的置信域.另外,本文也构造了未知参数的最小二乘估计量,并证明了它的渐近性质.仅就置信域及其覆盖概率的大小方面,通过模拟研究比较了经验似然方法与最小二乘法的优劣.  相似文献   

7.
考虑非参数协变量带有测量误差的非线性半参数模型,构造了模型中未知参数的经验对数似然比统计量,在测量误差分布为普通光滑分布时,证明了所提出的统计量具有渐近χ2分布,由此结果可以用来构造未知参数的置信域.另外也构造了未知参数的最小二乘估计量,并证明了它的渐近性质.就置信域及其覆盖概率大小方面,通过模拟研究比较了经验似然方法与最小二乘法的优劣.  相似文献   

8.
当分布密度的形式未知时,参数的极大似然估计没有明确的解析表达式,也不能通过设计算法由计算机运算得到。本文我们将从该分布中抽取的样本当作是来自另一个形式已知的分布密度的样本,该已知分布密度的选取依赖于未知的分布密度,但是具有与未知分布相似的边界性质。基于这两个分布族,我们提出了拟极大似然估计的概念,同时,对这种拟极大似然估计的渐近性质进行了讨论。结果表明拟极大拟然估计与极大似然估计有关相同的渐近性质,并且由于拟极大似然估计的获得不依赖于未知分布密度的形式,只与一已知的分布密度有关,使得通过计算机可以实现对其的求解。  相似文献   

9.
该文证明了,在非线性回归模型中,若以均方误差或均方误差矩阵为标准,拟似然估计是正则广义拟似然估计类中的最优估计,并讨论了拟得分函数最优性与拟似然估计最优性的关系.为改进拟似然估计,该文提出了一种约束拟似然估计,并证明了约束拟似然估计比拟似然估计有较小的均方误差.  相似文献   

10.
可加模型中参数的经验欧氏似然估计   总被引:1,自引:0,他引:1  
可加模型是参数设计中一个非常重要,实用的模型。本文讨论了可加模型中参数的经验欧氏似然估计及其性质,并给出了一种与参数的经验欧氏似然估计渐近等效的加权LS估计,最后分析了一个数值例子。  相似文献   

11.
??This paper constructs a penalized empirical likelihood estimation method via quadratic inference function method, filter method and empirical likelihood estimation method. Under some regular conditions, we derived the large sample properties of estimators and show that the proposed empirical likelihood ratio is asymptotically to chi-square distribution. Furthermore, the infinite sample performance of the proposed method is evaluated by Monte Carlo simulation and real data analysis.  相似文献   

12.
This paper constructs a penalized empirical likelihood estimation method via quadratic inference function method, filter method and empirical likelihood estimation method. Under some regular conditions, we derived the large sample properties of estimators and show that the proposed empirical likelihood ratio is asymptotically to chi-square distribution. Furthermore, the infinite sample performance of the proposed method is evaluated by Monte Carlo simulation and real data analysis.  相似文献   

13.
Total Variation-based regularization, well established for image processing applications such as denoising, was recently introduced for Maximum Penalized Likelihood Estimation (MPLE) as an effective way to estimate nonsmooth probability densities. While the estimates show promise for a variety of applications, the nonlinearity of the regularization leads to computational challenges, especially in multidimensions. In this article we present a numerical methodology, based upon the Split Bregman L1 minimization technique, that overcomes these challenges, allowing for the fast and accurate computation of 2D TV-based MPLE. We test the methodology with several examples, including V-fold cross-validation with large 2D datasets, and highlight the application of TV-based MPLE to point process crime modeling. The proposed algorithm is implemented as the Matlab function TVMPLE. The Matlab (mex) code and datasets for examples and simulations are available as online supplements.  相似文献   

14.
Efficient Estimation in a Semiparametric Autoregressive Model   总被引:3,自引:0,他引:3  
This paper constructs efficient estimates of the parameter in the semiparametric auto-regression model ,with a smooth function and independent and identically distributed innovations t with zero means and finite variances. This will be done under the assumptions that and that the errors have a density with finite Fisher information for location. The former condition guarantees that the process can be chosen to be stationary and ergodic.  相似文献   

15.
本文综合近邻权函数法及最小二乘法,用两阶段最小二乘估计的方法得到了半参数EV模型中参数的估计量及其强相合性,渐近正态性。同时也得到了非参数函数的估计量及其强相合性,一致强相合性。  相似文献   

16.
李平 《应用概率统计》2004,20(2):179-183
考虑一类混合模型g(x)=(1-ξ1-ξ2)f(x,θ'0) ξ1f(x,θ'1) ξ2f(x,θ'2),其中ξ1,ξ2属于区域Ω:0≤ξ1,ξ2,ξ1 ξ2≤1,f为一给定的概率密度函数,θ'i(i=0,1,2)为m维常数向量,本文讨论了该模型的似然比统计量的极限分布.  相似文献   

17.
When the true mixing density is known to be continuous, the maximum likelihood estimate of the mixing density does not provide a satisfying answer due to its degeneracy. Estimation of mixing densities is a well-known ill-posed indirect problem. In this article, we propose to estimate the mixing density by maximizing a penalized likelihood and call the resulting estimate the nonparametric maximum penalized likelihood estimate (NPMPLE). Using theory and methods from the calculus of variations and differential equations, a new functional EM algorithm is derived for computing the NPMPLE of the mixing density. In the algorithm, maximizers in M-steps are found by solving an ordinary differential equation with boundary conditions numerically. Simulation studies show the algorithm outperforms other existing methods such as the popular EMS algorithm. Some theoretical properties of the NPMPLE and the algorithm are also discussed. Computer code used in this article is available online.  相似文献   

18.
主要考虑了生长曲线模型中的参数矩阵的估计.首先基于Potthoff-Roy变换后的生长曲线模型,采用不同的惩罚函数:Hard Thresholding函数,LASSO,ENET,改进LASSO,SACD给出了参数矩阵的惩罚最小二乘估计.接着对不做变换的生长曲线模型,直接定义其惩罚最小二乘估计,基于Nelder-Mead法给出了估计的数值解算法.最后对提出的参数估计方法进行了数据模拟.结果表明自适应LASSO在估计方面效果比较好.  相似文献   

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