John Benjamins Publishing Company
Chapter 13. Multinomial (polytomous) logistic regression models of three and more near synonyms
Abstract
This chapter continues the discussion of logistic regression models, which can be used to predict the speaker’s choice between different near synonyms or variants. This time you will learn to model situations when the number of possible outcomes is greater than two. Such models are called multinomial, or polytomous. The method will be illustrated with a case study of three near synonyms: let, allow and permit.
Abstract
This chapter continues the discussion of logistic regression models, which can be used to predict the speaker’s choice between different near synonyms or variants. This time you will learn to model situations when the number of possible outcomes is greater than two. Such models are called multinomial, or polytomous. The method will be illustrated with a case study of three near synonyms: let, allow and permit.
Chapters in this book
- Prelim pages i
- Table of contents vii
- Acknowledgements xi
- Introduction 1
- Chapter 1. What is statistics? 7
- Chapter 2. Introduction to R 21
- Chapter 3. Descriptive statistics for quantitative variables 41
- Chapter 4. How to explore qualitative variables 69
- Chapter 5. Comparing two groups 87
- Chapter 6. Relationships between two quantitative variables 115
- Chapter 7. More on frequencies and reaction times 139
- Chapter 8. Finding differences between several groups 171
- Chapter 9. Measuring associations between two categorical variables 199
- Chapter 10. Association measures 223
- Chapter 11. Geographic variation of quite: Distinctive collexeme analysis 241
- Chapter 12. Probabilistic multifactorial grammar and lexicology 253
- Chapter 13. Multinomial (polytomous) logistic regression models of three and more near synonyms 277
- Chapter 14. Conditional inference trees and random forests 291
- Chapter 15. Behavioural profiles, distance metrics and cluster analysis 301
- Chapter 16. Introduction to Semantic Vector Spaces 323
- Chapter 17. Language and space 333
- Chapter 18. Multidimensional analysis of register variation 351
- Chapter 19. Exemplars, categories, prototypes 367
- Chapter 20. Constructional change and motion charts 387
- Epilogue 395
- The most important R objects and basic operations with them 397
- Main plotting functions and graphical parameters in R 409
- References 425
- Subject Index 433
- Index of R functions and packages 441
Chapters in this book
- Prelim pages i
- Table of contents vii
- Acknowledgements xi
- Introduction 1
- Chapter 1. What is statistics? 7
- Chapter 2. Introduction to R 21
- Chapter 3. Descriptive statistics for quantitative variables 41
- Chapter 4. How to explore qualitative variables 69
- Chapter 5. Comparing two groups 87
- Chapter 6. Relationships between two quantitative variables 115
- Chapter 7. More on frequencies and reaction times 139
- Chapter 8. Finding differences between several groups 171
- Chapter 9. Measuring associations between two categorical variables 199
- Chapter 10. Association measures 223
- Chapter 11. Geographic variation of quite: Distinctive collexeme analysis 241
- Chapter 12. Probabilistic multifactorial grammar and lexicology 253
- Chapter 13. Multinomial (polytomous) logistic regression models of three and more near synonyms 277
- Chapter 14. Conditional inference trees and random forests 291
- Chapter 15. Behavioural profiles, distance metrics and cluster analysis 301
- Chapter 16. Introduction to Semantic Vector Spaces 323
- Chapter 17. Language and space 333
- Chapter 18. Multidimensional analysis of register variation 351
- Chapter 19. Exemplars, categories, prototypes 367
- Chapter 20. Constructional change and motion charts 387
- Epilogue 395
- The most important R objects and basic operations with them 397
- Main plotting functions and graphical parameters in R 409
- References 425
- Subject Index 433
- Index of R functions and packages 441