Confidence Intervals in Generalized Regression Models

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A01=Esa Uusipaikka
advanced data modeling
Author_Esa Uusipaikka
binomial
binomial probability models
Category=PBT
Common Success Probability
Cox regression analysis
Cumulative Distribution Function
Denominator Degrees
distribution
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
Fuel Consumption Data
function
Generalized Regression Models
GLM
GRM
interest
Interest Function
likelihood
Likelihood Ratio Statistic
likelihood-based confidence interval construction
linear
Link Function
log
Log Likelihood Function
matrix
Maximum Likelihood
Model Matrix
Multinomial Regression Model
Nonlinear Regression Model
Observed Log Likelihood Function
Parent Smoking Behavior
Perch Height
profile likelihood estimation
quantitative research techniques
Regression Model
Regression Parameter Vector
Regression Parameters
response
Response Vector
Scatter Plot
statistical inference methods
Statistically Independent
vector
Yi Ln

Product details

  • ISBN 9780367387082
  • Weight: 453g
  • Dimensions: 156 x 234mm
  • Publication Date: 07 Oct 2019
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
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A Cohesive Approach to Regression Models

Confidence Intervals in Generalized Regression Models introduces a unified representation—the generalized regression model (GRM)—of various types of regression models. It also uses a likelihood-based approach for performing statistical inference from statistical evidence consisting of data and its statistical model.

Provides a Large Collection of Models

The book encompasses a number of different regression models, from very simple to more complex ones. It covers the general linear model (GLM), nonlinear regression model, generalized linear model (GLIM), logistic regression model, Poisson regression model, multinomial regression model, and Cox regression model. The author also explains methods of constructing confidence regions, profile likelihood-based confidence intervals, and likelihood ratio tests.

Uses Statistical Inference Package to Make Inferences on Real-Valued Parameter Functions

Offering software that helps with statistical analyses, this book focuses on producing statistical inferences for data modeled by GRMs. It contains numerical and graphical results while providing the code online.

Uusipaikka, Esa

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