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A Nonparametric Simulated Maximum Likelihood Estimation Method

A Nonparametric Simulated Maximum Likelihood Estimation Method PDF Author: J. D. Fermanian
Publisher:
ISBN:
Category :
Languages : en
Pages : 20

Book Description


A Nonparametric Simulated Maximum Likelihood Estimation Method

A Nonparametric Simulated Maximum Likelihood Estimation Method PDF Author: J. D. Fermanian
Publisher:
ISBN:
Category :
Languages : en
Pages : 20

Book Description


Estimation of Dynamic Models with Nonparametric Simulated Maximum Likelihood

Estimation of Dynamic Models with Nonparametric Simulated Maximum Likelihood PDF Author: Dennis Kristensen
Publisher:
ISBN:
Category :
Languages : en
Pages : 47

Book Description
We propose a simulated maximum likelihood estimator for dynamic models based on non-parametric kernel methods. Our method is designed for models without latent dynamics from which one can simulate observations but cannot obtain a closed-form representation of the likelihood function. Using the simulated observations, we nonparametrically estimate the density - which is unknown in closed form - by kernel methods, and then construct a likelihood function that can be maximized. We prove for dynamic models that this nonparametric simulated maximum likelihood (NPSML) estimator is consistent and asymptotically efficient. NPSML is applicable to general classes of models and is easy to implement in practice.

Nonparametric Function Estimation, Modeling, and Simulation

Nonparametric Function Estimation, Modeling, and Simulation PDF Author: James R. Thompson
Publisher: SIAM
ISBN: 0898712610
Category : Mathematics
Languages : en
Pages : 317

Book Description
Topics emphasized in this book include nonparametric density estimation, multi-dimensional data analysis, cancer progression, chaos theory, and parallel based algorithms.

Simulated Maximum Likelihood Estimation of Discrete Models with Group Data

Simulated Maximum Likelihood Estimation of Discrete Models with Group Data PDF Author: Lung-Fei Lee
Publisher:
ISBN:
Category : Estimation theory
Languages : en
Pages : 23

Book Description


Exact Maximum Likelihood Estimation of Observation-driven Econometric Models

Exact Maximum Likelihood Estimation of Observation-driven Econometric Models PDF Author: Francis X. Diebold
Publisher:
ISBN:
Category : Econometric models
Languages : en
Pages : 38

Book Description
The possibility of exact maximum likelihood estimation of many observation-driven models remains an open question. Often only approximate maximum likelihood estimation is attempted, because the unconditional density needed for exact estimation is not known in closed form. Using simulation and nonparametric density estimation techniques that facilitate empirical likelihood evaluation, we develop an exact maximum likelihood procedure. We provide an illustrative application to the estimation of ARCH models, in which we compare the sampling properties of the exact estimator to those of several competitors. We find that, especially in situations of small samples and high persistence, efficiency gains are obtained. We conclude with a discussion of directions for future research, including application of our methods to panel data models.

Maximum Likelihood Estimation

Maximum Likelihood Estimation PDF Author: Scott R. Eliason
Publisher: SAGE
ISBN: 9780803941076
Category : Mathematics
Languages : en
Pages : 100

Book Description
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.

Econometric Modelling with Time Series

Econometric Modelling with Time Series PDF Author: Vance Martin
Publisher: Cambridge University Press
ISBN: 9780521196604
Category : Business & Economics
Languages : en
Pages : 924

Book Description
This book provides a general framework for specifying, estimating, and testing time series econometric models. Special emphasis is given to estimation by maximum likelihood, but other methods are also discussed, including quasi-maximum likelihood estimation, generalized method of moments estimation, nonparametric estimation, and estimation by simulation. An important advantage of adopting the principle of maximum likelihood as the unifying framework for the book is that many of the estimators and test statistics proposed in econometrics can be derived within a likelihood framework, thereby providing a coherent vehicle for understanding their properties and interrelationships. In contrast to many existing econometric textbooks, which deal mainly with the theoretical properties of estimators and test statistics through a theorem-proof presentation, this book squarely addresses implementation to provide direct conduits between the theory and applied work.

Computational Methods in Statistics and Econometrics

Computational Methods in Statistics and Econometrics PDF Author: Hisashi Tanizaki
Publisher: CRC Press
ISBN: 9780203022023
Category : Mathematics
Languages : en
Pages : 538

Book Description
Reflecting current technological capacities and analytical trends, Computational Methods in Statistics and Econometrics showcases Monte Carlo and nonparametric statistical methods for models, simulations, analyses, and interpretations of statistical and econometric data. The author explores applications of Monte Carlo methods in Bayesian estimation, state space modeling, and bias correction of ordinary least squares in autoregressive models. The book offers straightforward explanations of mathematical concepts, hundreds of figures and tables, and a range of empirical examples. A CD-ROM packaged with the book contains all of the source codes used in the text.

Maximum Likelihood Estimation and Inference

Maximum Likelihood Estimation and Inference PDF Author: Russell B. Millar
Publisher: John Wiley & Sons
ISBN: 9780470094822
Category : Mathematics
Languages : en
Pages : 0

Book Description
This book takes a fresh look at the popular and well-established method of maximum likelihood for statistical estimation and inference. It begins with an intuitive introduction to the concepts and background of likelihood, and moves through to the latest developments in maximum likelihood methodology, including general latent variable models and new material for the practical implementation of integrated likelihood using the free ADMB software. Fundamental issues of statistical inference are also examined, with a presentation of some of the philosophical debates underlying the choice of statistical paradigm. Key features: Provides an accessible introduction to pragmatic maximum likelihood modelling. Covers more advanced topics, including general forms of latent variable models (including non-linear and non-normal mixed-effects and state-space models) and the use of maximum likelihood variants, such as estimating equations, conditional likelihood, restricted likelihood and integrated likelihood. Adopts a practical approach, with a focus on providing the relevant tools required by researchers and practitioners who collect and analyze real data. Presents numerous examples and case studies across a wide range of applications including medicine, biology and ecology. Features applications from a range of disciplines, with implementation in R, SAS and/or ADMB. Provides all program code and software extensions on a supporting website. Confines supporting theory to the final chapters to maintain a readable and pragmatic focus of the preceding chapters. This book is not just an accessible and practical text about maximum likelihood, it is a comprehensive guide to modern maximum likelihood estimation and inference. It will be of interest to readers of all levels, from novice to expert. It will be of great benefit to researchers, and to students of statistics from senior undergraduate to graduate level. For use as a course text, exercises are provided at the end of each chapter.

Maximum Penalized Likelihood Estimation

Maximum Penalized Likelihood Estimation PDF Author: P.P.B. Eggermont
Publisher: Springer Nature
ISBN: 1071612441
Category : Mathematics
Languages : en
Pages : 514

Book Description
This book deals with parametric and nonparametric density estimation from the maximum (penalized) likelihood point of view, including estimation under constraints. The focal points are existence and uniqueness of the estimators, almost sure convergence rates for the L1 error, and data-driven smoothing parameter selection methods, including their practical performance. The reader will gain insight into technical tools from probability theory and applied mathematics.