Read Books Online and Download eBooks, EPub, PDF, Mobi, Kindle, Text Full Free.
Sieve Maximum Likelihood Estimation In A Semi Parametric Regression Model With Errors In Variables
Download Sieve Maximum Likelihood Estimation In A Semi Parametric Regression Model With Errors In Variables full books in PDF, epub, and Kindle. Read online Sieve Maximum Likelihood Estimation In A Semi Parametric Regression Model With Errors In Variables ebook anywhere anytime directly on your device. Fast Download speed and no annoying ads. We cannot guarantee that every ebooks is available!
Book Synopsis Sieve Maximum Likelihood Estimation in a Semi-parametric Regression Model with Errors in Variables by : Denis Belomestny
Download or read book Sieve Maximum Likelihood Estimation in a Semi-parametric Regression Model with Errors in Variables written by Denis Belomestny and published by . This book was released on 2016 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt:
Book Synopsis New M-estimators in Semiparametric Regression with Errors in Variables by : Cristina Butucea
Download or read book New M-estimators in Semiparametric Regression with Errors in Variables written by Cristina Butucea and published by . This book was released on 2005 with total page 35 pages. Available in PDF, EPUB and Kindle. Book excerpt:
Book Synopsis Semiparametric Maximum Likelihood for Regression with Measurement Error by : Eun-Young Suh
Download or read book Semiparametric Maximum Likelihood for Regression with Measurement Error written by Eun-Young Suh and published by . This book was released on 2001 with total page 202 pages. Available in PDF, EPUB and Kindle. Book excerpt: Semiparametric maximum likelihood analysis allows inference in errors-invariables models with small loss of efficiency relative to full likelihood analysis but with significantly weakened assumptions. In addition, since no distributional assumptions are made for the nuisance parameters, the analysis more nearly parallels that for usual regression. These highly desirable features and the high degree of modelling flexibility permitted warrant the development of the approach for routine use. This thesis does so for the special cases of linear and nonlinear regression with measurement errors in one explanatory variable. A transparent and flexible computational approach is developed, the analysis is exhibited on some examples, and finite sample properties of estimates, approximate standard errors, and likelihood ratio inference are clarified with simulation.
Book Synopsis Maximum Likelihood Estimation of Measurement Error Models Based on the Monte Carlo EM Algorithm by : Antara Majumdar
Download or read book Maximum Likelihood Estimation of Measurement Error Models Based on the Monte Carlo EM Algorithm written by Antara Majumdar and published by . This book was released on 2007 with total page 194 pages. Available in PDF, EPUB and Kindle. Book excerpt: Likelihood based estimation of stochastic models when one of the explanatory variables is masked by measurement error, is presented. Special methods are required to estimate the parameters of a model with one or more explanatory variables that are measured with error. In such models, the variable measured with error is unobservable. Only an unbiased manifestation is observable. The method proposed, provides an adjustment to obtain unbiased estimates of model parameters. The correction of bias, however, is not possible without additional identifying information. An instrumental variable is a practical form of additional information that can be used for this purpose. By treating the unobservable explanatory variable as 'missing' data the Markov Chain Monte Carlo Expectation Maximization (MCEM) algorithm is applied for maximum likelihood estimation of the parameters of a measurement error model with identifying information in the form of an instrumental variable. Implementation strategies, computational aspects, behavior of the estimators and inference resulting from application of the MCEM algorithm to the instrumental variable measurement error model are studied. A general methodology is developed that encompasses a variety of previously studied special case models and it is shown how they all can be modeled and estimated using the MCEM algorithm. Through our method it is shown how a structural logistic regression measurement error model can be directly fitted without the probit approximation. This was not possible prior to the research presented in this dissertation. The proposed methodology is compared numerically with the exact maximum likelihood estimates for two normal family models. Also, the behavior of the method is investigated when one of the variance parameters is near the boundary of the parameter space. The problem of measurement error in a survival time model with right censoring is considered and it is shown how the proposed method can be used to estimate a hazard function model, by construction of some special likelihoods and further methodological development. Two methods have been proposed, one of which is a semi-parametric method and the other is full parametric.
Book Synopsis Robust Semiparametric Regression Estimation Using Targeted Maximum Likelihood with Application to Biomarker Discovery and Epidemiology by : Catherine Ann Tuglus
Download or read book Robust Semiparametric Regression Estimation Using Targeted Maximum Likelihood with Application to Biomarker Discovery and Epidemiology written by Catherine Ann Tuglus and published by . This book was released on 2010 with total page 270 pages. Available in PDF, EPUB and Kindle. Book excerpt: In many scientific studies the goal is to determine the effect of a particular feature or variable on a given outcome in order to help understand, identify, and quantify the driving factors behind a particular phenomena. This type of analysis is commonly referred to as variable importance analysis. Parametric methods used to estimate these effects are prone to bias. This bias is often the result of incorrect model specification and improper inference for the parameter of interest. Alternative machine learning techniques, such as Random Forest, often result in abstract measures of importance whose inference depends on a computationally intensive bootstrap analysis. In this thesis, robust estimators for variable importance based on targeted maximum likelihood methodology are presented and developed for three types of outcomes (1) univariate continuous, (2) multivariate continuous, and (3) binary outcome. These estimators are specifically designed to target the effect of a variable of interest on an outcome while adjusting for confounders when the variable of interest is of general form (i.e. continuous or discrete). When the outcome is continuous (1,2), the effect is on an additive scale. When the outcome is binary (3), the effect is on a multiplicative scale, and the importance measure is a relative risk. The estimators are developed under a flexible semiparametric model, in which only components related to the variable of interest must be fully specified, and effect modification can be easily incorporated. Based on targeted maximum likelihood theory, the presented estimators are double robust and locally efficient, and correct inference for the parameter of interest is available using the corresponding influence curve. In this thesis, the three estimators relating to the three outcomes are derived from targeted maximum likelihood methodology and implemented by adapting standard statistical regression software. These estimators are applied in both simulation and application. In a simulated biomarker discovery analysis, the robustness of the estimator for a univariate continuous outcome is compared to other common methods of variable importance under increasing correlation among the covariates. In a repeated measures setting, the double robust property of the estimator for a multivariate continuous outcome is demonstrated in simulation, and the estimator is applied in a transcription factor analysis to determine the activity level of transcription factors during the cell cycle in yeast. For a binary outcome, the estimator for the relative risk is applied to estimate the effect of HIV genetic susceptibility scores on viral response. Effect modification is also explored and model selection methodology is introduced.
Author :Jian Yang Publisher :London : Department of Economics, University of Western Ontario ISBN 13 : Total Pages :68 pages Book Rating :4.:/5 (318 download)
Book Synopsis Semiparametric Maximum Likelihood Estimation of Nonlinear Regression Models and Monte Carlo Evidence by : Jian Yang
Download or read book Semiparametric Maximum Likelihood Estimation of Nonlinear Regression Models and Monte Carlo Evidence written by Jian Yang and published by London : Department of Economics, University of Western Ontario. This book was released on 1997 with total page 68 pages. Available in PDF, EPUB and Kindle. Book excerpt:
Book Synopsis Semiparametric Analysis of Failure Time Data with Complex Structures by : Yeqian Liu
Download or read book Semiparametric Analysis of Failure Time Data with Complex Structures written by Yeqian Liu and published by . This book was released on 2016 with total page 119 pages. Available in PDF, EPUB and Kindle. Book excerpt: Failure time data arise in many fields including biomedical studies and industrial life testing. Right-censored failure time data are often observed from a cohort of prevalent cases that are subject to length-biased sampling, which are termed as length-biased and right-censored data. Interval-censored failure time data arise when the failure time of interest in a survival study is not exactly observed but known only to fall within some interval or window. One area that often produces such data is medical studies with periodic follow-ups, in which the medical condition of interest such as the onset of a disease is only known to occur between two adjacent examination times. An important special case of interval-censored data is current status data which arise when each study subject is observed only once and the only information available is whether the failure event of interest has occurred or not by the observation time. Sometimes we also refer current status data as case I interval-censored data and the general case as case II interval-censored data. Semiparametric regression analysis of both right-censored and interval-censored failure time data has recently attracted a great deal of attention. Many procedures have been proposed for their regression analysis under various models. However, in many settings, the population include a cured (nonsusceptible) subpopulation, where only individuals in the susceptible subpopulation will go on to experience the event. Since classical survival models implicitly assume that all individuals will eventually experience the event of interest, they cannot be used in such contexts. They would in fact lead to incorrect results such as, among others, an overestimation of the survival of the non-cured subjects. The research in this dissertation focuses on the statistical analysis for right-censored data with length-biased sampling, interval-censored data with a cured subgroup in the presence of potential dependent censoring and measurement errors. Chapter 1 describes specific examples of right-censored and interval-censored failure time data and reviews the literature on some important topics, including nonparametric and semiparametric estimation, regression analysis in the presence of length-biased sampling and a cured subgroup respectively. Chapter 2 discusses regression analysis of length-biased and right-censored data with with partially linear varying effects. For this problem, we consider quantile regression analysis of right-censored and length-biased data and present a semiparametric varying coefficient partially linear model. For estimation of regression parameters, a three-stage procedure that makes use of the inverse probability weighted technique is developed, and the asymptotic properties of the resulting estimators are established. In addition, the approach allows the dependence of the censoring variable on covariates, while most of the existing methods assume the independence between censoring variables and covariates. A simulation study is conducted and suggests that the proposed approach works well in practical situations. Also an illustrative example is provided. Chapter 3 considers regression analysis of current status data in the presence of a cured subgroup and dependent censoring. For the problem, we develop a sieve maximum likelihood estimation approach with the use of latent variables and Bernstein polynomials. For the determination of the proposed estimators, an EM algorithm and the asymptotic properties of the estimators are established. An extensive simulation study conducted to asses the finite sample performance of the method indicates that it performs well for practical situations. An illustrative example using a data set from a tumor toxicological study is provided. Chapter 4 considers regression analysis of interval-censored data in the presence of a cured subgroup and the case where one or more explanatory variables in the model are subject to measurement errors. These errors should be taken into account in the estimation of the model, to avoid biased estimations. A general approach that exists in the literature is the SIMEX algorithm, a method based on simulations which allows one to estimate the effect of measurement error on the bias of the estimators and to reduce this bias. We extend the SIMEX approach to the mixture cure model with interval-censored data. Comprehensive simulations study as well as a real data application are provided. Several directions for future research are discussed in Chapter 5.
Book Synopsis Penalized Likelihood for General Semi-Parametric Regression Models by : P. J. Green
Download or read book Penalized Likelihood for General Semi-Parametric Regression Models written by P. J. Green and published by . This book was released on 1985 with total page 31 pages. Available in PDF, EPUB and Kindle. Book excerpt: This paper examines maximum penalized likelihood estimation in the context of general regression problems, characterized as probability models with composite; likelihood functions. The emphasis is on the common situation where a parametric model is considered satisfactory but for inhomogeneity with respect to a few extra variables. A finite-dimensional formulation is adopted, using a suitable set of basis functions. Appropriate definitions of deviance, degrees of freedom, and residual are provided, and the method of cross-validation for choice of the tuning constant is discussed. Quadratic approximations are derived for all the required statistics. Additional keywords: algorithms; smoothing; goodness of fit tests; nonlinear repression. (Author).
Book Synopsis Comparisons of Least Squares and Errors-in-Variables Regression, with Special Reference to Randomized Analysis of Covariance by : Raymond J. Carroll
Download or read book Comparisons of Least Squares and Errors-in-Variables Regression, with Special Reference to Randomized Analysis of Covariance written by Raymond J. Carroll and published by . This book was released on 1985 with total page 22 pages. Available in PDF, EPUB and Kindle. Book excerpt: In an errors-in-variables regression model, the least squares estimate is generally inconsistent for the complete regression parameter but can be consistent for certain linear combinations of this parameter. The authors conjecture that, when least squares is consistent for a linear combination of the regression parameter, it will be preferred to and errors-in-variables estimate, at least asymptotically. The conjecture is false, in general, but it is true for important classes of problems. One such problem is a randomized two-group analysis of covariance, upon which this document focuses. Keywords: Maximum likelihood estimation.
Book Synopsis Maximum Penalized Likelihood Estimation for Semi-parametric Regression Models with Partly Interval-censored Failure Time Data by : Jinqing Li
Download or read book Maximum Penalized Likelihood Estimation for Semi-parametric Regression Models with Partly Interval-censored Failure Time Data written by Jinqing Li and published by . This book was released on 2015 with total page 273 pages. Available in PDF, EPUB and Kindle. Book excerpt: Interval-censored failure time data arise in many areas including demographical, financial, actuarial, medical and sociological studies. By interval censoring we mean that the failure time is not always exactly observed and we can only observe an interval within which the failure event has occurred. The goal of this dissertation is to develop maximum penalized likelihood (MPL) methods for ptoportional hazard (PH), additive hazard (AH) and accelerated failure time (AFT) models with partly interval-censored failure time data, which contains exactly observed, left-censored, finite interval-censored and right-censored data.
Book Synopsis Maximum Likelihood Estimation of Misspecified Models by : T. Fomby
Download or read book Maximum Likelihood Estimation of Misspecified Models written by T. Fomby and published by Elsevier. This book was released on 2003-12-12 with total page 266 pages. Available in PDF, EPUB and Kindle. Book excerpt: Comparative study of pure and pretest estimators for a possibly misspecified two-way error component model / Badi H. Baltagi, Georges Bresson, Alain Pirotte -- Estimation, inference, and specification testing for possibly misspecified quantile regression / Tae-Hwan Kim, Halbert White -- Quasimaximum likelihood estimation with bounded symmetric errors / Douglas Miller, James Eales, Paul Preckel -- Consistent quasi-maximum likelihood estimation with limited information / Douglas Miller, Sang-Hak Lee -- An examination of the sign and volatility switching arch models under alternative distributional assumptions / Mohamed F. Omran, Florin Avram -- estimating a linear exponential density when the weighting matrix and mean parameter vector are functionally related / Chor-yiu Sin -- Testing in GMM models without truncation / Timothy J. Vogelsang -- Bayesian analysis of misspecified models with fixed effects / Tiemen Woutersen -- Tests of common deterministic trend slopes applied to quarterly global temperature data / Thomas B. Fomby, Timothy J. Vogelsang -- The sandwich estimate of variance / James W. Hardin -- Test statistics and critical values in selectivity models / R. Carter Hill, Lee C. Adkins, Keith A. Bender -- Introduction / Thomas B Fomby, R. Carter Hill.
Book Synopsis The Oxford Handbook of Applied Nonparametric and Semiparametric Econometrics and Statistics by : Jeffrey Racine
Download or read book The Oxford Handbook of Applied Nonparametric and Semiparametric Econometrics and Statistics written by Jeffrey Racine and published by Oxford University Press. This book was released on 2014-04 with total page 562 pages. Available in PDF, EPUB and Kindle. Book excerpt: This volume, edited by Jeffrey Racine, Liangjun Su, and Aman Ullah, contains the latest research on nonparametric and semiparametric econometrics and statistics. Chapters by leading international econometricians and statisticians highlight the interface between econometrics and statistical methods for nonparametric and semiparametric procedures.
Book Synopsis Adaptive Estimation in Time Series Regression Models by : Douglas Gardiner Steigerwald
Download or read book Adaptive Estimation in Time Series Regression Models written by Douglas Gardiner Steigerwald and published by . This book was released on 1989 with total page 180 pages. Available in PDF, EPUB and Kindle. Book excerpt:
Book Synopsis Maximum Likelihood Estimation by : Scott R. Eliason
Download or read book Maximum Likelihood Estimation written by Scott R. Eliason and published by SAGE. This book was released on 1993 with total page 100 pages. Available in PDF, EPUB and Kindle. Book excerpt: This is a short introduction to Maximum Likelihood (ML) Estimation. It provides a general modeling framework that utilizes the tools of ML methods to outline a flexible modeling strategy that accommodates cases from the simplest linear models (such as the normal error regression model) to the most complex nonlinear models linking endogenous and exogenous variables with non-normal distributions. Using examples to illustrate the techniques of finding ML estimators and estimates, the author discusses what properties are desirable in an estimator, basic techniques for finding maximum likelihood solutions, the general form of the covariance matrix for ML estimates, the sampling distribution of ML estimators; the use of ML in the normal as well as other distributions, and some useful illustrations of likelihoods.
Book Synopsis On the Maximum Likelihood Estimate for Logistic Errors-in-Variables Regression Models by : Raymond J. Carroll
Download or read book On the Maximum Likelihood Estimate for Logistic Errors-in-Variables Regression Models written by Raymond J. Carroll and published by . This book was released on 198? with total page 16 pages. Available in PDF, EPUB and Kindle. Book excerpt: Maximum likelihood estimates for errors-in-variables models are not always root-N consistent. We provide an example of this for logistic regression. (Author).
Book Synopsis Semiparametric Estimation of Multivariate Tobit Model by : Bih-Shiow Chen
Download or read book Semiparametric Estimation of Multivariate Tobit Model written by Bih-Shiow Chen and published by . This book was released on 1988 with total page 236 pages. Available in PDF, EPUB and Kindle. Book excerpt:
Book Synopsis Maximum Penalized Likelihood Estimation by : Paul P. Eggermont
Download or read book Maximum Penalized Likelihood Estimation written by Paul P. Eggermont and published by Springer Science & Business Media. This book was released on 2009-06-02 with total page 580 pages. Available in PDF, EPUB and Kindle. Book excerpt: Unique blend of asymptotic theory and small sample practice through simulation experiments and data analysis. Novel reproducing kernel Hilbert space methods for the analysis of smoothing splines and local polynomials. Leading to uniform error bounds and honest confidence bands for the mean function using smoothing splines Exhaustive exposition of algorithms, including the Kalman filter, for the computation of smoothing splines of arbitrary order.