Regression Analysis in R 1st Edition 2022 Softbound at Meripustak

Regression Analysis in R 1st Edition 2022 Softbound

Books from same Author: Bolin, Jocelyn E.

Books from same Publisher: Taylor and Francis Ltd

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  • General Information  
    Author(s)Bolin, Jocelyn E.
    PublisherTaylor and Francis Ltd
    Edition1st Edition
    ISBN9780367272586
    Pages180
    BindingSoftbound
    LanguageEnglish
    Publish YearJuly 2022

    Description

    Taylor and Francis Ltd Regression Analysis in R 1st Edition 2022 Softbound by Bolin, Jocelyn E.

    Regression Analysis in R: A Comprehensive View for the Social Sciences covers the basic applications of multiple linear regression all the way through to more complex regression applications and extensions. Written for graduate level students of social science disciplines this book walks readers through bivariate correlation giving them a solid framework from which to expand into more complicated regression models. Concepts are demonstrated using R software and real data examples.Key Features:Full output examples complete with interpretationFull syntax examples to help teach R codeAppendix explaining basic R functionsMethods for multilevel data that are often included in basic regression textsEnd of Chapter Comprehension Exercises 1. The Issue of Causality. 2. Describing Simple Relationships. 3. Linear Regression Analysis. 4. Regression Assumptions and Interpretational Considerations. 5. Dummy Variables and Interactions. 6. Hierarchical Regression. 7. Moderation and Mediation. 8. Dealing with Non- Linearity. 9. Regression Models for Nested Data. 10. Fixed Effects Modeling.