共查询到20条相似文献,搜索用时 12 毫秒
1.
The authors develop jackknife and analytical variance estimators for the estimator of Chambers & Dunstan (1986) and Rao, Kovar & Mantel (1990) of the finite population distribution function, using complete auxiliary information. They also describe the associated model and show the design consistency of the variance estimators, whose small‐sample performance is examined through a limited simulation study. They highlight the operational advantages of the jackknife in the model‐based setting of Chambers & Dunstan (1986) and its better conditional performance in the design‐based setting of Rao, Kovar & Mantel (1990). 相似文献
2.
Raghunath Arnab 《Statistical Papers》1998,39(4):405-408
Randomized response (RR) techniques are used to gather information of a sensitive nature. Optimal sampling strategies for estimating a finite population total under a superpopulation model have been derived by utilizing auxiliary information suitably in constructing the RR techniques. 相似文献
3.
Raghunath Arnab 《统计学通讯:理论与方法》2013,42(8):2495-2503
Optimal sampling strategies which minimise the expected mean square error for a linear design as well as model-design unbiased estimators for a finite population total for two-stage and stratified sampling are obtained under different superpopu1ation models 相似文献
4.
Stephen M. S. Lee & G. Alastair Young 《Journal of the Royal Statistical Society. Series B, Statistical methodology》1997,59(2):383-400
For estimating the distribution of a standardized statistic, the bootstrap estimate is known to be local asymptotic minimax. Various computational techniques have been developed to improve on the simulation efficiency of uniform resampling, the standard Monte Carlo approach to approximating the bootstrap estimate. Two new approaches are proposed which give accurate yet simple approximations to the bootstrap estimate. The second of the approaches even improves the convergence rate of the simulation error. A simulation study examines the performance of these two approaches in comparison with other modified bootstrap estimates. 相似文献
5.
The authors consider a semiparametric partially linear regression model with serially correlated errors. They propose a new way of estimating the error structure which has the advantage that it does not involve any nonparametric estimation. This allows them to develop an inference procedure consisting of a bandwidth selection method, an efficient semiparametric generalized least squares estimator of the parametric component, a goodness‐of‐fit test based on the bootstrap, and a technique for selecting significant covariates in the parametric component. They assess their approach through simulation studies and illustrate it with a concrete application. 相似文献
6.
ABSTRACTThe non parametric approach is considered to estimate probability density function (Pdf) which is supported on(0, ∞). This approach is the inverse gamma kernel. We show that it has same properties as gamma, reciprocal inverse Gaussian, and inverse Gaussian kernels such that it is free of the boundary bias, non negative, and it achieves the optimal rate of convergence for the mean integrated squared error. Also some properties of the estimator were established such as bias and variance. Comparison of the bandwidth selection methods for inverse gamma kernel estimation of Pdf is done. 相似文献
7.
C.Y. Wang 《统计学通讯:理论与方法》2013,42(7):1819-1828
The article concerns covariance estimates in a replicated measurement error model with correlated, heteroscedastic errors. Freedman has conjectured that using more of the data will improve estimates of covariance matrices and result in a more efficient estimate of the coefficient of the regression model. The paper confirms the conjecture asymptotically for the case that all random variables are normally distributed, but the gain is not substantial. 相似文献
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9.
Nels Johnson 《Journal of applied statistics》2017,44(5):833-852
Generalized linear models (GLMs) with error-in-covariates are useful in epidemiological research due to the ubiquity of non-normal response variables and inaccurate measurements. The link function in GLMs is chosen by the user depending on the type of response variable, frequently the canonical link function. When covariates are measured with error, incorrect inference can be made, compounded by incorrect choice of link function. In this article we propose three flexible approaches for handling error-in-covariates and estimating an unknown link simultaneously. The first approach uses a fully Bayesian (FB) hierarchical framework, treating the unobserved covariate as a latent variable to be integrated over. The second and third are approximate Bayesian approach which use a Laplace approximation to marginalize the variables measured with error out of the likelihood. Our simulation results show support that the FB approach is often a better choice than the approximate Bayesian approaches for adjusting for measurement error, particularly when the measurement error distribution is misspecified. These approaches are demonstrated on an application with binary response. 相似文献
10.
Mayor-Gallego J. A. Moreno-Rebollo J. L. Jiménez-Gamero M. D. 《AStA Advances in Statistical Analysis》2019,103(1):1-35
AStA Advances in Statistical Analysis - Auxiliary information $${varvec{x}}$$ is commonly used in survey sampling at the estimation stage. We propose an estimator of the finite population... 相似文献
11.
Matthias Schmid 《Allgemeines Statistisches Archiv》2006,90(3):419-438
Summary Microaggregation by individual ranking is one of themost commonly applied disclosure control techniques for continuous microdata.
The paper studies the effect of microaggregation by individual ranking on the least squares estimation of a multiple linear
regression model. It is shown that the traditional least squares estimates are asymptotically unbiased. Moreover, the least
squares estimates asymptotically have the same variances as the least squares estimates based on the original (non-aggregated)
data. Thus, asymptotically, microaggregation by individual ranking does not result in a loss of efficiency in the least squares
estimation of a multiple linear regression model.
I thank Hans Schneeweiss for very helpful discussions and comments. Financial support from the Deutsche Forschungsgemeinschaft
(German Science Foundation) is gratefully acknowledged. 相似文献
12.
Germán Aneiros-Pérez 《Statistical Papers》2004,45(2):191-210
Consider a regression model where the regression function is the sum of a linear and a nonparametric component. Assuming that
the errors of the model follow a stationary strong mixing process with mean zero, the problem of bandwidth selection for a
kernel estimator of the nonparametric component is addressed here. We obtain an asymptotic expression for an optimal band-width
and we propose to use a plug-in methodology in order to estimate this bandwidth through preliminary estimates of the unknown
quantities. Asymptotic optimality for the plug-in bandwidth is established. 相似文献
13.
AbstractThis article addresses the problem of estimating population distribution function for simple random sampling in the presence of non response and measurement error together. We suggest a general class of estimators for estimating the cumulative distribution function using the auxiliary information. The expressions for the bias and mean squared error are derived up to the first order of approximation. The performance of the proposed class of estimators is compared with considered estimators both theoretically and numerically. A real data set is used to support the theoretical findings. 相似文献
14.
《Journal of Statistical Computation and Simulation》2012,82(10):1921-1935
ABSTRACTThis article explores the estimation problem of the coefficients in the varying coefficient model with heteroscedastic errors. Specifically, we first present a method for estimating the variance function of the error term and the resulting estimator is proved to be consistent. Then, motivated by the generalized least-squares procedure for dealing with heteroscedasticity in the linear regression literature, we re-weight each squared residual term in the local linear smoother with the inverse of the corresponding estimated error variance to construct estimates of the coefficients. Simulation experiments and practical data analysis conducted demonstrate that the re-weighting approach can improve the accuracy of the coefficient estimates under a finite sample size, especially when the error heteroscedasticity is strong. 相似文献
15.
16.
Rp
of a linear regression model of the type Y = Xθ + ɛ, where X is the design matrix, Y the vector of the response variable and ɛ the random error vector that follows an AR(1) correlation structure. These estimators
are asymptotically analyzed, by proving their strong consistency, asymptotic normality and asymptotic efficiency. In a simulation
study, a better behaviour of the Mean Squared Error of the proposed estimator with respect to that of the generalized least
squares estimators is observed.
Received: November 16, 1998; revised version: May 10, 2000 相似文献
17.
Several estimators, including the classical and the regression estimators of finite population mean, are compared, both theoretically and empirically, under a calibration model, where the dependent variable(y), and not the independent variable(x), can be observed for all units of the finite population. It is shown asymptotically that when conditioned on x, the bias of the classical estimator may be much smaller than that of the regression estimators; whereas when conditioned on y, the regression estimator may have much smaller conditional bias than the classical estimator. Since all the y's(not x's) can be observed, it seems appropriate to make comparison under the conditional distribution of each estimator with y fixed. In this case, the regression estimator has smaller variance, smaller conditional bias, and the conditional coverage probability closer to its nominal level 相似文献
18.
This article proposes a method for estimating principal points for a multivariate binary distribution, assuming a log-linear model for the distribution. Through numerical simulation studies, the proposed parametric estimation method using a log-linear model is compared with a nonparametric estimation method. 相似文献
19.
M. C. Spruill 《统计学通讯:理论与方法》2013,42(9):3305-3312
A known number N of packages each contain, in differing unknown amounts, both substances of no particular import and some substance of interest, the total weight of the latter substance for all N of the packages being an unknown quantity T. Based on the amounts of the substance of interest found in each of n (n ≦= N) randomly sampled packages one is to decide, with a very small probability of the error of wrongly deciding that T exceeds L, whether or not the quantity T exceeds a given amount L. An optimal way of doing this is presented in which the probability of the error of wrongly deciding that T exceeds L can be precisely bounded above as desired. 相似文献
20.
The Cash statistic, also known as the statistic, is commonly used for the analysis of low-count Poisson data, including data with null counts for certain values of the independent variable. The use of this statistic is especially attractive for low-count data that cannot be combined, or re-binned, without loss of resolution. This paper presents a new maximum-likelihood solution for the best-fit parameters of a linear model using the Poisson-based Cash statistic. The solution presented in this paper provides a new and simple method to measure the best-fit parameters of a linear model for any Poisson-based data, including data with null counts. In particular, the method enforces the requirement that the best-fit linear model be non-negative throughout the support of the independent variable. The method is summarized in a simple algorithm to fit Poisson counting data of any size and counting rate with a linear model, by-passing entirely the use of the traditional statistic. 相似文献