406 results (0,24666 seconds)

Brand

Merchant

Price (EUR)

Reset filter

Products
From
Shops

Survival Analysis

Survival Analysis

Survival analysis generally deals with analysis of data arising from clinical trials. Censoring truncation and missing data create analytical challenges and the statistical methods and inference require novel and different approaches for analysis. Statistical properties essentially asymptotic ones of the estimators and tests are aptly handled in the counting process framework which is drawn from the larger arm of stochastic calculus. With explosion of data generation during the past two decades survival data has also enlarged assuming a gigantic size. Most statistical methods developed before the millennium were based on a linear approach even in the face of complex nature of survival data. Nonparametric nonlinear methods are best envisaged in the Machine Learning school. This book attempts to cover all these aspects in a concise way. Survival Analysis offers an integrated blend of statistical methods and machine learning useful in analysis of survival data. The purpose of the offering is to give an exposure to the machine learning trends for lifetime data analysis. Features: Classical survival analysis techniques for estimating statistical functional and hypotheses testing Regression methods covering the popular Cox relative risk regression model Aalen’s additive hazards model etc. Information criteria to facilitate model selection including Akaike Bayes and Focused Penalized methods Survival trees and ensemble techniques of bagging boosting and random survival forests A brief exposure of neural networks for survival data R program illustration throughout the book

GBP 99.99
1

Handbook of Survival Analysis

Real and Complex Analysis

Handbook of Cluster Analysis

Handbook of Cluster Analysis

Handbook of Cluster Analysis provides a comprehensive and unified account of the main research developments in cluster analysis. Written by active distinguished researchers in this area the book helps readers make informed choices of the most suitable clustering approach for their problem and make better use of existing cluster analysis tools. The book is organized according to the traditional core approaches to cluster analysis from the origins to recent developments. After an overview of approaches and a quick journey through the history of cluster analysis the book focuses on the four major approaches to cluster analysis. These approaches include methods for optimizing an objective function that describes how well data is grouped around centroids dissimilarity-based methods mixture models and partitioning models and clustering methods inspired by nonparametric density estimation. The book also describes additional approaches to cluster analysis including constrained and semi-supervised clustering and explores other relevant issues such as evaluating the quality of a cluster. This handbook is accessible to readers from various disciplines reflecting the interdisciplinary nature of cluster analysis. For those already experienced with cluster analysis the book offers a broad and structured overview. For newcomers to the field it presents an introduction to key issues. For researchers who are temporarily or marginally involved with cluster analysis problems the book gives enough algorithmic and practical details to facilitate working knowledge of specific clustering areas.

GBP 66.99
1

Convex Analysis

Computational Exome and Genome Analysis

Applied Survey Data Analysis

Compositional Data Analysis in Practice

Real Analysis With Proof Strategies

Accelerated Life Models Modeling and Statistical Analysis

Correspondence Analysis in Practice

Handbook of Meta-Analysis

Handbook of Meta-Analysis

Meta-analysis is the application of statistics to combine results from multiple studies and draw appropriate inferences. Its use and importance have exploded over the last 25 years as the need for a robust evidence base has become clear in many scientific areas including medicine and health social sciences education psychology ecology and economics. Recent years have seen an explosion of methods for handling complexities in meta-analysis including explained and unexplained heterogeneity between studies publication bias and sparse data. At the same time meta-analysis has been extended beyond simple two-group comparisons of continuous and binary outcomes to comparing and ranking the outcomes from multiple groups to complex observational studies to assessing heterogeneity of effects and to survival and multivariate outcomes. Many of these methods are statistically complex and are tailored to specific types of data. Key features Rigorous coverage of the full range of current statistical methodology used in meta-analysis Comprehensive coherent and unified overview of the statistical foundations behind meta-analysis Detailed description of the primary methods for both univariate and multivariate data Computer code to reproduce examples in chapters Thorough review of the literature with thousands of references Applications to specific types of biomedical and social science data Supplementary website with code data sample chapters and errata This book is for a broad audience of graduate students researchers and practitioners interested in the theory and application of statistical methods for meta-analysis. It is written at the level of graduate courses in statistics but will be of interest to and readable for quantitative scientists from a range of disciplines. The book can be used as a graduate level textbook as a general reference for methods or as an introduction to specialized topics using state-of-the art methods. | Handbook of Meta-Analysis

GBP 59.99
1

A First Course in Functional Analysis

Practical Multivariate Analysis

Handbook of Infectious Disease Data Analysis

Exploratory Multivariate Analysis by Example Using R

Crime Mapping and Spatial Data Analysis using R

Crime Mapping and Spatial Data Analysis using R

Crime mapping and analysis sit at the intersection of geocomputation data visualisation and cartography spatial statistics environmental criminology and crime analysis. This book brings together relevant knowledge from these fields into a practical hands-on guide providing a useful introduction and reference material for topics in crime mapping the geography of crime environmental criminology and crime analysis. It can be used by students practitioners and academics alike whether to develop a university course to support further training and development or to hone skills in self-teaching R and crime mapping and spatial data analysis. It is not an advanced statistics textbook but rather an applied guide and later useful reference books intended to be read and for readers to practice the learnings from each chapter in sequence. In the first part of this volume we introduce key concepts for geographic analysis and representation and provide the reader with the foundations needed to visualise spatial crime data. We then introduce a series of tools to study spatial homogeneity and dependence. A key focus in this section is how to visualise and detect local clusters of crime and repeat victimisation. The final chapters introduce the use of basic spatial models which account for the distribution of crime across space. In terms of spatial data analysis the focus of the book is on spatial point pattern analysis and lattice or area data analysis.   | Crime Mapping and Spatial Data Analysis using R

GBP 74.99
1

A Theoretical Introduction to Numerical Analysis

Statistical Techniques for Data Analysis

Spectral Theory and Nonlinear Functional Analysis

Graphical Methods for Data Analysis

Wavelet Analysis Basic Concepts and Applications

The Analysis of Time Series An Introduction with R

Applied Meta-Analysis with R and Stata

Applied Meta-Analysis with R and Stata

Review of the First Edition: The authors strive to reduce theory to a minimum which makes it a self-learning text that is comprehensible for biologists physicians etc. who lack an advanced mathematics background. Unlike in many other textbooks R is not introduced with meaningless toy examples; instead the reader is taken by the hand and shown around some analyses graphics and simulations directly relating to meta-analysis… A useful hands-on guide for practitioners who want to familiarize themselves with the fundamentals of meta-analysis and get started without having to plough through theorems and proofs. —Journal of Applied Statistics Statistical Meta-Analysis with R and Stata Second Edition provides a thorough presentation of statistical meta-analyses (MA) with step-by-step implementations using R/Stata. The authors develop analysis step by step using appropriate R/Stata functions which enables readers to gain an understanding of meta-analysis methods and R/Stata implementation so that they can use these two popular software packages to analyze their own meta-data. Each chapter gives examples of real studies compiled from the literature. After presenting the data and necessary background for understanding the applications various methods for analyzing meta-data are introduced. The authors then develop analysis code using the appropriate R/Stata packages and functions. What’s New in the Second Edition: Adds Stata programs along with the R programs for meta-analysis Updates all the statistical meta-analyses with R/Stata programs Covers fixed-effects and random-effects MA meta-regression MA with rare-event and MA-IPD vs MA-SS Adds five new chapters on multivariate MA publication bias missing data in MA MA in evaluating diagnostic accuracy and network MA Suitable as a graduate-level text for a meta-data analysis course the book is also a valuable reference for practitioners and biostatisticians (even those with little or no experience in using R or Stata) in public health medical research governmental agencies and the pharmaceutical industry. | Applied Meta-Analysis with R and Stata

GBP 44.99
1