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1.
本文研究了空间数据变系数部分线性回归中的分位数估计. 模型中的参数估计量通过未知系数函数的分段多项式逼近得到, 而未知系数函数的估计量通过将参数估计量代入模型中并通过局部线性逼近得到. 文中推导了未知参数向量估计量的渐近分布, 并建立了未知系数函数估计量在内点及边界点的渐近分布. 通过Monte Carlo 模拟研究了估计量的有限样本性质.  相似文献   

2.
本文借助B—spline函数逼近开发了一种整体估计程序,用以估计变系数回归中的未知系数函数.在较弱假设条件下,建立了未知函数B—spline估计量的整体收敛速度,渐近性结果显示B-spline估计量达到了最优收敛速度,并推导了未知函数B—spline估计量的渐近分布.本文还给出了一种光滑参数选择方法,通过Monte Carlo模拟研究了估计量的有限样本性质,并用文中提出的方法分析了1980年美国总统选举投票数据.  相似文献   

3.
本文在多类型复发间隔时间数据下,研究了一类广义半参数风险回归模型的参数估计问题,给出了该模型中未知参数和非参数函数的一种估计方法,并证明了估计量的相合性和渐近正态性.最后利用数值模拟来评估估计量在有限样本下的表现.  相似文献   

4.
总体服从二项分布B(n,p),p为未知参数,应用麦克劳林公式,得出了只有当f(p)=a1p a2p2 ... anpn时,函数f(p)才存在无偏估计,并给出了无偏估计量.  相似文献   

5.
韩忠成  林金官 《应用数学》2019,32(2):479-485
非参数模型是统计学中常用的一类模型.在实际应用中,回归函数可能不是连续的,即在某些未知的位置上存在跳点.检测这些跳点对于回归函数的估计非常重要.本文基于B样条和众数估计,提出一个稳健跳点检测方法.然后利用检测出的跳点给出了回归函数的稳健有效估计量,并讨论了参数的选择.数值模拟和实例分析验证了所提方法在有限样本下的表现.  相似文献   

6.
本文研究纵向数据下非参数部分带有测量误差的部分线性变系数模型的估计.利用B样条函数近似模型中的变系数函数,构造偏差修正的二次推断函数,得到模型中未知参数和变系数函数的估计.证明变系数函数估计量的相合性和参数估计量的渐近正态性.数值模拟和实例分析结果表明所提估计方法在有限样本下的有效性.  相似文献   

7.
利用样本分位数的Logistic分布参数的渐近置信估计   总被引:1,自引:1,他引:0  
基于Logistic分布的若干个样本分位数 ,利用线性回归模型建立Logistic分布位置参数及尺度参数的渐近正态且渐近无偏估计量 ,得到分布参数的渐近置信估计。  相似文献   

8.
单指标模型是统计学中常用的维数约减模型.在实际应用中,连接函数可能有奇异点,包括某些未知位置上有跳点和某些相关过程的结构变点.检测这些奇异点对于系数估计和了解结构改变非常重要.本文基于精细最小平均条件方差估计和函数二阶导数的零穿越性质,提出一个跳点检测方法,然后利用检测出的跳点给出参数向量和连接函数的半参数跳点检测估计量,并讨论程序参数的选择.在较弱的假设条件下,本文建立跳点检测程序和所提估计量的大样本性质.数值模拟和实例分析验证了所提方法在有限样本下的表现.  相似文献   

9.
Harter H_L.,Balakrishnan N.等先后讨论了Logistic总体分布参数的极大似然估计,近似极大似然估计;其后Ogawa J.,Lloyd E.H.,Kulldorff G.,Gupta S.S,及chan L.K. 等又先后讨论了Logistlic分布参数的最佳线性无偏估计及估计的相对效率等问题.令人遗憾的是:在大样本情形下,上述估计均难以求得.为缓解这一困难,本文讨论利用样本分位数的Logistic总体的近似最佳线性无偏估计,给出估计量的大样本性质,以及样本分位数不超过10情形下,估计量有渐近最大相对估计效率时样本分位数的选取方案等.  相似文献   

10.
给出了一种用于估计变系数模型中未知函数的逐元B-Spline方法,建立了估计量的局部渐近偏差,方差和渐近正态分布,开发了一种快速选择估计量窗宽的方法,通过Monte Carlo模拟研究了估计量的有限样本性质.  相似文献   

11.
王德辉 《东北数学》2007,23(2):176-188
This paper is concerned with the distributional properties of a median unbiased estimator of ARCH(0,1) coefficient. The exact distribution of the estimator can be easily derived, however its practical calculations are too heavy to implement, even though the middle range of sample sizes. Since the estimator is shown to have asymptotic normality, asymptotic expansions for the distribution and the percentiles of the estimator are derived as the refinements. Accuracies of expansion formulas are evaluated numerically, and the results of which show that we can effectively use the expansion as a fine approximation of the distribution with rapid calculations. Derived expansion are applied to testing hypothesis of stationarity, and an implementation for a real data set is illustrated.  相似文献   

12.
This paper is concerned with the distributional properties of a median unbiased estimator of ARCH(0,1)coefficient.The exact distribution of the estimator can be easily derived,however its practical calculations are too heavy to implement, even though the middle range of sample sizes.Since the estimator is shown to have asymptotic normality,asymptotic expansions for the distribution and the percentiles of the estimator are derived as the refinements.Accuracies of expansion formulas are evaluated numerically,and the results of which show that we can effectively use the expansion as a fine approximation of the distribution with rapid calculations.Derived expansion are applied to testing hypothesis of stationarity,and an implementation for a real data set is illustrated.  相似文献   

13.
研究了柯西分布的参数估计问题,给出了位置参数的最小一乘估计和尺度参数的低阶矩估计.证明了柯西分布位置参数的最小一乘估计具有渐近无偏性与强相合性;尺度参数的低阶矩估计具有强相合性.  相似文献   

14.
讨论三参数一般指数分布的参数估计,首先讨论了三参数一般指数分布参数的最大似然估计的求解问题,当其中参数α=1时,应用指数分布抽样基本定理,得到了三参数一般指数分布其它参数的一致最小方差无偏估计;并且由此给出求解三参数一般指数分布参数最大似然估计的迭代方法,得到了三参数一般指数分布参数最大似然估计的近似值,给出了模拟结果以说明迭代方法的收敛性;并以相关文献的观察数据作为样本,得到了三参数一般指数分布的参数估计,从而说明了迭代方法的有效性.  相似文献   

15.
Distribution estimation is very important in order to make statistical inference for parameters or its functions based on this distribution.In this work we propose an estimator of the distribution of some variable with non-smooth auxiliary information,for example,a symmetric distribution of this variable.A smoothing technique is employed to handle the non-differentiable function.Hence,a distribution can be estimated based on smoothed auxiliary information.Asymptotic properties of the distribution estimator are derived and analyzed.The distribution estimators based on our method are found to be significantly efficient than the corresponding estimators without these auxiliary information.Some simulation studies are conducted to illustrate the finite sample performance of the proposed estimators.  相似文献   

16.
For a normal distribution the sample covariance matrix S provides an unbiased estimator of the population covariance matrix Σ. We address the problem of finding an unbiased estimator of the lower triangular matrix Ψ defined by the Cholesky decomposition Σ = ΨΨ′.  相似文献   

17.
For the invariant decision problem of estimating a continuous distribution function with the Kolmogorov-Smirnov loss within the class of proper– distribution functions, it is proved that the sample distribution function is the best invariant estimator only for the sample size n = 1 and 2. Further it is shown that the best invariant estimator is minimax. Exact jumps of the best invariant estimator are derived for n 4.  相似文献   

18.
The problem of estimating linear functions of ordered scale parameters of two Gamma distributions is considered. A necessary and sufficient condition on the ratio of two coefficients is given for the maximum likelihood estimator (MLE) to dominate the crude unbiased estimator (UE) in terms of mean square error. A modified MLE which satisfies the restriction is also suggested, and a necessary and sufficient condition is also given for it to dominate the admissible estimator based solely on one sample. The estimation of linear functions of variances in two sample problem and also of variance components in a one-way random effect model is mentioned.  相似文献   

19.
We consider the problem of estimating the variance of a population using judgment post-stratification. By conditioning on the observed vector of ordered in-stratum sample sizes, we develop a conditionally unbiased nonparametric estimator that outperforms the sample variance except when the rankings are very poor. This estimator also outperforms the standard unbiased nonparametric variance estimator from unbalanced ranked-set sampling.  相似文献   

20.
We give expansions for the unbiased estimator of a parametric function of the mean vector in a multivariate natural exponential family with simple quadratic variance function. This expansion is given in terms of a system of multivariate orthogonal polynomials with respect to the density of the sample mean. We study some limit properties of the system of orthogonal polynomials. We show that these properties are useful to establish the limit distribution of unbiased estimators.  相似文献   

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