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Generalized linear models and extensions
紀錄類型:
書目-語言資料,印刷品 : Monograph/item
正題名/作者:
Generalized linear models and extensions/ by M. Ataharul Islam, Soma Chowdhury Biswas.
作者:
Islam, M. Ataharul.
其他作者:
Biswas, Soma Chowdhury.
出版者:
Singapore :Springer Nature Singapore : : 2025.,
面頁冊數:
xvii, 266 p. :ill., digital ; : 24 cm.;
Contained By:
Springer Nature eBook
標題:
Bayesian Inference. -
電子資源:
https://doi.org/10.1007/978-981-96-4726-2
ISBN:
9789819647262
Generalized linear models and extensions
Islam, M. Ataharul.
Generalized linear models and extensions
[electronic resource] /by M. Ataharul Islam, Soma Chowdhury Biswas. - Singapore :Springer Nature Singapore :2025. - xvii, 266 p. :ill., digital ;24 cm.
Introduction -- Exponential Family of Distributions -- Univariate GLM -- Estimation and Tests for Univariate GLM -- Quasi Likelihood -- Multivariate Data and GLM: Generalized Estimating Equations -- Generalized Linear Mixed Models -- Extension of GLM for Bivariate Data -- Extension of GLM for Multivariate Data: Alternative Models -- Generalized Quasi Likelihood Methods -- Bayesian Approach for GLM -- GLM for Big Data Analytics.
This book presents a wide range of topics to address the needs of several groups of users of rapidly growing methods of generalized linear models. Since the introduction of the idea of generalized linear models (GLM) in early seventies, during the past four decades the modelling of statistical data have experienced a major transformation from linear models based on normality assumption to a more flexible unified approach of generalized linear models. The number of readers and users of generalized linear models have increased manifold. In addition, the use of generalized linear models has expanded in many new fields of applications where statistical models are being employed at an increasing rate. It is important to note here that the learners and users of GLM have a widely varied background in different disciplines. Considering these pressing needs, this book focuses on: (i) upper undergraduate and graduate level students in need of a thorough understanding about the basic concepts of generalized linear models along with appropriate applications; (ii) researchers and users in need of advanced generalized linear models for analysing bivariate or multivariate data stemming from longitudinal or repeated measures data; and (iii) new challenges to analyse big data where the traditional techniques fail to provide any reasonable modelling strategy. In other words, this book starts with a thorough background of the generalized linear models for the new learners, then provides multivariate extensions to advanced level techniques for researchers and users in various disciplines, and finally some innovative modelling strategies are introduced using generalized linear models in the emerging field of big data analytics. It provides materials for new learners, for users/researchers who are in need of more advanced techniques and also strategies for employing linear models in big data analytics. Hence, techniques of generalized linear models will be presented in the proposed book covering the needs of new learners, users of advanced techniques, researchers in need of statistical modelling of any data type and users of big data analytics wanting to increase predictive accuracy of classification and regression tree techniques.
ISBN: 9789819647262
Standard No.: 10.1007/978-981-96-4726-2doiSubjects--Topical Terms:
1211345
Bayesian Inference.
LC Class. No.: QA279
Dewey Class. No.: 519.5
Generalized linear models and extensions
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Introduction -- Exponential Family of Distributions -- Univariate GLM -- Estimation and Tests for Univariate GLM -- Quasi Likelihood -- Multivariate Data and GLM: Generalized Estimating Equations -- Generalized Linear Mixed Models -- Extension of GLM for Bivariate Data -- Extension of GLM for Multivariate Data: Alternative Models -- Generalized Quasi Likelihood Methods -- Bayesian Approach for GLM -- GLM for Big Data Analytics.
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