|
Showing 1 - 4 of
4 matches in All Departments
The primary objective of this book is to study some of the research
topics in the area of analysis of complex surveys which have not
been covered in any book yet. It discusses the analysis of
categorical data using three models: a full model, a log-linear
model and a logistic regression model. It is a valuable resource
for survey statisticians and practitioners in the field of
sociology, biology, economics, psychology and other areas who have
to use these procedures in their day-to-day work. It is also useful
for courses on sampling and complex surveys at the
upper-undergraduate and graduate levels. The importance of sample
surveys today cannot be overstated. From voters' behaviour to
fields such as industry, agriculture, economics, sociology,
psychology, investigators generally resort to survey sampling to
obtain an assessment of the behaviour of the population they are
interested in. Many large-scale sample surveys collect data using
complex survey designs like multistage stratified cluster designs.
The observations using these complex designs are not independently
and identically distributed - an assumption on which the classical
procedures of inference are based. This means that if classical
tests are used for the analysis of such data, the inferences
obtained will be inconsistent and often invalid. For this reason,
many modified test procedures have been developed for this purpose
over the last few decades.
The Theory of Probability is a major tool that can be used to
explain and understand the various phenomena in different natural,
physical and social sciences. This book provides a systematic
exposition of the theory in a setting which contains a balanced
mixture of the classical approach and the modern day axiomatic
approach. After reviewing the basis of the theory, the book
considers univariate distributions, bivariate normal distribution,
multinomial distribution, convergence of random variables and
elements of stochastic process. Difficult ideas have been explained
lucidly and augmented with explanatory notes, examples and
exercises. The basic requirement for reading the book is the
knowledge of mathematics at graduate level.This book tries to
explain the difficult ideas in axiomatic approach to the theory in
a clear and comprehensive manner. It addresses several unusual
distributions including the power series distribution. Readers will
find many worked-out examples and exercises with hints, which will
make the book easily readable and engaging.The author is a former
professor of the Indian Statistical Institute, India.
The primary objective of this book is to study some of the research
topics in the area of analysis of complex surveys which have not
been covered in any book yet. It discusses the analysis of
categorical data using three models: a full model, a log-linear
model and a logistic regression model. It is a valuable resource
for survey statisticians and practitioners in the field of
sociology, biology, economics, psychology and other areas who have
to use these procedures in their day-to-day work. It is also useful
for courses on sampling and complex surveys at the
upper-undergraduate and graduate levels. The importance of sample
surveys today cannot be overstated. From voters' behaviour to
fields such as industry, agriculture, economics, sociology,
psychology, investigators generally resort to survey sampling to
obtain an assessment of the behaviour of the population they are
interested in. Many large-scale sample surveys collect data using
complex survey designs like multistage stratified cluster designs.
The observations using these complex designs are not independently
and identically distributed - an assumption on which the classical
procedures of inference are based. This means that if classical
tests are used for the analysis of such data, the inferences
obtained will be inconsistent and often invalid. For this reason,
many modified test procedures have been developed for this purpose
over the last few decades.
The aim of this book is to make a comprehensive review on some of the research topics in the area of survey sampling which has not been covered in any book yet. The proposed book aims at making a comprehensive review of applications of Bayes procedures, Empirical Bayes procedures and their ramifications (like linear Bayes estimation, restricted Bayes least square prediction, constrained Bayes estimation, Bayesian robustness) in making inference from a finite population sampling. Parimal Mukhopadhyay is Professor at the Indian Statistical Institute (ISI), Calcutta. He received his Ph.D. degree in Statistics from the University of Calcutta in 1977. He also served as a faculty member in the University of Ife, Nigeria, Moi University, Kenya, University of South Pacific, Fiji Islands and held visiting positions at University of Montreal, University of Windsor, Stockholm University, University of Western Australia, etc. He has to his credit more than fifty research papers in Survey Sampling, some co-authored, three text books on Statistics and three research monographs in Survey Sampling. He is a member of the Institute of Mathematical Statistics and an elected member of the International Statistical Institute.
|
You may like...
Higher
Michael Buble
CD
(1)
R507
Discovery Miles 5 070
|