Book contents
- Frontmatter
- Contents
- List of figures
- List of tables
- List of panels
- Preface
- Part I Elementary statistical analysis
- Chapter 1 Introduction
- Chapter 2 Descriptive statistics
- Chapter 3 Correlation
- Chapter 4 Simple linear regression
- Part II Samples and inductive statistics
- Part III Multiple linear regression
- Part IV Further topics in regression analysis
- Part V Specifying and interpreting models: four case studies
- Appendix A The four data sets
- Appendix B Index numbers
- Bibliography
- Index of subjects
- Index of names
Chapter 4 - Simple linear regression
Published online by Cambridge University Press: 05 June 2012
- Frontmatter
- Contents
- List of figures
- List of tables
- List of panels
- Preface
- Part I Elementary statistical analysis
- Chapter 1 Introduction
- Chapter 2 Descriptive statistics
- Chapter 3 Correlation
- Chapter 4 Simple linear regression
- Part II Samples and inductive statistics
- Part III Multiple linear regression
- Part IV Further topics in regression analysis
- Part V Specifying and interpreting models: four case studies
- Appendix A The four data sets
- Appendix B Index numbers
- Bibliography
- Index of subjects
- Index of names
Summary
The aim in this chapter is to extend the analysis of the relationship between two variables to cover the topic of regression. In this introductory discussion we will deal only with linear (straight-line) relationships between two variables (bivariate regression). In chapter 8 this analysis will be extended to include more than two variables (multiple or multivariate regression), and non-linear relationships will be discussed in chapter 12. As with the discussion of correlation, problems arising from the use of sample data are deferred until the issues of confidence intervals and hypothesis testing are covered in chapters 5 and 6.
The concept of regression
In the discussion of correlation in chapter 3 we emphasized that no distinction was made between the two variables, X and Y, and that interchanging them would have no effect on the correlation coefficient. In the present chapter we change procedure and introduce a fundamental distinction between the two variables.
Explanatory and dependent variables
It will often be the case that we have some theoretical reason to think that movements in one of the variables are influenced by movements in the other.
In that case, the convention is to use X for the variable that is having the influence, and Y for the variable that is influenced.
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- Making History CountA Primer in Quantitative Methods for Historians, pp. 93 - 114Publisher: Cambridge University PressPrint publication year: 2002