Information Bounds and Nonparametric Maximum Likelihood Estimation

Information Bounds and Nonparametric Maximum Likelihood Estimation
Author :
Publisher : Birkhäuser
Total Pages : 129
Release :
ISBN-10 : 9783034886215
ISBN-13 : 3034886217
Rating : 4/5 (15 Downloads)

Synopsis Information Bounds and Nonparametric Maximum Likelihood Estimation by : P. Groeneboom

This book contains the lecture notes for a DMV course presented by the authors at Gunzburg, Germany, in September, 1990. In the course we sketched the theory of information bounds for non parametric and semiparametric models, and developed the theory of non parametric maximum likelihood estimation in several particular inverse problems: interval censoring and deconvolution models. Part I, based on Jon Wellner's lectures, gives a brief sketch of information lower bound theory: Hajek's convolution theorem and extensions, useful minimax bounds for parametric problems due to Ibragimov and Has'minskii, and a recent result characterizing differentiable functionals due to van der Vaart (1991). The differentiability theorem is illustrated with the examples of interval censoring and deconvolution (which are pursued from the estimation perspective in part II). The differentiability theorem gives a way of clearly distinguishing situations in which 1 2 the parameter of interest can be estimated at rate n / and situations in which this is not the case. However it says nothing about which rates to expect when the functional is not differentiable. Even the casual reader will notice that several models are introduced, but not pursued in any detail; many problems remain. Part II, based on Piet Groeneboom's lectures, focuses on non parametric maximum likelihood estimates (NPMLE's) for certain inverse problems. The first chapter deals with the interval censoring problem.

Recent Advances in Systems, Control and Information Technology

Recent Advances in Systems, Control and Information Technology
Author :
Publisher : Springer
Total Pages : 836
Release :
ISBN-10 : 9783319489230
ISBN-13 : 3319489232
Rating : 4/5 (30 Downloads)

Synopsis Recent Advances in Systems, Control and Information Technology by : Roman Szewczyk

This book presents the proceedings of the International Conference on Systems, Control and Information Technologies 2016. It includes research findings from leading experts in the fields connected with INDUSTRY 4.0 and its implementation, especially: intelligent systems, advanced control, information technologies, industrial automation, robotics, intelligent sensors, metrology and new materials. Each chapter offers an analysis of a specific technical problem followed by a numerical analysis and simulation as well as the implementation for the solution of a real-world problem.

Maximum Penalized Likelihood Estimation

Maximum Penalized Likelihood Estimation
Author :
Publisher : Springer Science & Business Media
Total Pages : 544
Release :
ISBN-10 : 0387952683
ISBN-13 : 9780387952680
Rating : 4/5 (83 Downloads)

Synopsis Maximum Penalized Likelihood Estimation by : P.P.B. Eggermont

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.

Likelihood Methods in Survival Analysis

Likelihood Methods in Survival Analysis
Author :
Publisher : CRC Press
Total Pages : 401
Release :
ISBN-10 : 9781351109703
ISBN-13 : 1351109707
Rating : 4/5 (03 Downloads)

Synopsis Likelihood Methods in Survival Analysis by : Jun Ma

Many conventional survival analysis methods, such as the Kaplan-Meier method for survival function estimation and the partial likelihood method for Cox model regression coefficients estimation, were developed under the assumption that survival times are subject to right censoring only. However, in practice, survival time observations may include interval-censored data, especially when the exact time of the event of interest cannot be observed. When interval-censored observations are present in a survival dataset, one generally needs to consider likelihood-based methods for inference. If the survival model under consideration is fully parametric, then likelihood-based methods impose neither theoretical nor computational challenges. However, if the model is semi-parametric, there will be difficulties in both theoretical and computational aspects. Likelihood Methods in Survival Analysis: With R Examples explores these challenges and provides practical solutions. It not only covers conventional Cox models where survival times are subject to interval censoring, but also extends to more complicated models, such as stratified Cox models, extended Cox models where time-varying covariates are present, mixture cure Cox models, and Cox models with dependent right censoring. The book also discusses non-Cox models, particularly the additive hazards model and parametric log-linear models for bivariate survival times where there is dependence among competing outcomes. Features Provides a broad and accessible overview of likelihood methods in survival analysis Covers a wide range of data types and models, from the semi-parametric Cox model with interval censoring through to parametric survival models for competing risks Includes many examples using real data to illustrate the methods Includes integrated R code for implementation of the methods Supplemented by a GitHub repository with datasets and R code The book will make an ideal reference for researchers and graduate students of biostatistics, statistics, and data science, whose interest in survival analysis extend beyond applications. It offers useful and solid training to those who wish to enhance their knowledge in the methodology and computational aspects of biostatistics.

Nonparametric Estimation under Shape Constraints

Nonparametric Estimation under Shape Constraints
Author :
Publisher : Cambridge University Press
Total Pages : 429
Release :
ISBN-10 : 9780521864015
ISBN-13 : 0521864011
Rating : 4/5 (15 Downloads)

Synopsis Nonparametric Estimation under Shape Constraints by : Piet Groeneboom

This book introduces basic concepts of shape constrained inference and guides the reader to current developments in the subject.

Proceedings of the First Seattle Symposium in Biostatistics: Survival Analysis

Proceedings of the First Seattle Symposium in Biostatistics: Survival Analysis
Author :
Publisher : Springer Science & Business Media
Total Pages : 314
Release :
ISBN-10 : 9781468463163
ISBN-13 : 1468463160
Rating : 4/5 (63 Downloads)

Synopsis Proceedings of the First Seattle Symposium in Biostatistics: Survival Analysis by : Danyu Lin

The papers in this volume discuss important methodological advances in several important areas, including multivariate failure time data and interval censored data. The book will be an indispensable reference for researchers and practitioners in biostatistics, medical research, and the health sciences.

Analysis of Censored Data

Analysis of Censored Data
Author :
Publisher : IMS
Total Pages : 310
Release :
ISBN-10 : 0940600390
ISBN-13 : 9780940600393
Rating : 4/5 (90 Downloads)

Synopsis Analysis of Censored Data by : Hira L. Koul

High Dimensional Probability II

High Dimensional Probability II
Author :
Publisher : Springer Science & Business Media
Total Pages : 491
Release :
ISBN-10 : 9781461213581
ISBN-13 : 1461213584
Rating : 4/5 (81 Downloads)

Synopsis High Dimensional Probability II by : Evarist Giné

High dimensional probability, in the sense that encompasses the topics rep resented in this volume, began about thirty years ago with research in two related areas: limit theorems for sums of independent Banach space valued random vectors and general Gaussian processes. An important feature in these past research studies has been the fact that they highlighted the es sential probabilistic nature of the problems considered. In part, this was because, by working on a general Banach space, one had to discard the extra, and often extraneous, structure imposed by random variables taking values in a Euclidean space, or by processes being indexed by sets in R or Rd. Doing this led to striking advances, particularly in Gaussian process theory. It also led to the creation or introduction of powerful new tools, such as randomization, decoupling, moment and exponential inequalities, chaining, isoperimetry and concentration of measure, which apply to areas well beyond those for which they were created. The general theory of em pirical processes, with its vast applications in statistics, the study of local times of Markov processes, certain problems in harmonic analysis, and the general theory of stochastic processes are just several of the broad areas in which Gaussian process techniques and techniques from probability in Banach spaces have made a substantial impact. Parallel to this work on probability in Banach spaces, classical proba bility and empirical process theory were enriched by the development of powerful results in strong approximations.