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Building Statistical Models in Python

You're reading from  Building Statistical Models in Python

Product type Book
Published in Aug 2023
Publisher Packt
ISBN-13 9781804614280
Pages 420 pages
Edition 1st Edition
Languages
Concepts
Authors (3):
Huy Hoang Nguyen Huy Hoang Nguyen
Profile icon Huy Hoang Nguyen
Paul N Adams Paul N Adams
Profile icon Paul N Adams
Stuart J Miller Stuart J Miller
Profile icon Stuart J Miller
View More author details

Table of Contents (22) Chapters

Preface 1. Part 1:Introduction to Statistics
2. Chapter 1: Sampling and Generalization 3. Chapter 2: Distributions of Data 4. Chapter 3: Hypothesis Testing 5. Chapter 4: Parametric Tests 6. Chapter 5: Non-Parametric Tests 7. Part 2:Regression Models
8. Chapter 6: Simple Linear Regression 9. Chapter 7: Multiple Linear Regression 10. Part 3:Classification Models
11. Chapter 8: Discrete Models 12. Chapter 9: Discriminant Analysis 13. Part 4:Time Series Models
14. Chapter 10: Introduction to Time Series 15. Chapter 11: ARIMA Models 16. Chapter 12: Multivariate Time Series 17. Part 5:Survival Analysis
18. Chapter 13: Time-to-Event Variables – An Introduction 19. Chapter 14: Survival Models 20. Index 21. Other Books You May Enjoy

Required model assumptions

Like the parametric tests we discussed in Chapter 4, Parametric Tests, linear regression is a parametric method and requires certain assumptions to be met for the results to be valid. For linear regression, there are four assumptions:

  • A linear relationship between variables
  • The normality of the residuals
  • The homoscedasticity of the residuals
  • Independent samples

Let’s discuss each of these assumptions individually.

A linear relationship between the variables

When thinking about fitting a linear model to data, our first consideration should be whether the model is appropriate for the data. When working with two variables, the relationship between the variables should be assessed with a scatter plot. Let’s look at an example. Three scatter plots are shown in Figure 6.6. The data is plotted, and the actual function used to generate the data is drawn over the data points. The leftmost plot shows data exhibiting a...

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