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Mastering Data analysis with R

You're reading from   Mastering Data analysis with R Gain sharp insights into your data and solve real-world data science problems with R—from data munging to modeling and visualization

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Product type Paperback
Published in Sep 2015
Publisher Packt
ISBN-13 9781783982028
Length 396 pages
Edition 1st Edition
Languages
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Author (1):
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Gergely Daróczi Gergely Daróczi
Author Profile Icon Gergely Daróczi
Gergely Daróczi
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Toc

Table of Contents (17) Chapters Close

Preface 1. Hello, Data! FREE CHAPTER 2. Getting Data from the Web 3. Filtering and Summarizing Data 4. Restructuring Data 5. Building Models (authored by Renata Nemeth and Gergely Toth) 6. Beyond the Linear Trend Line (authored by Renata Nemeth and Gergely Toth) 7. Unstructured Data 8. Polishing Data 9. From Big to Small Data 10. Classification and Clustering 11. Social Network Analysis of the R Ecosystem 12. Analyzing Time-series 13. Data Around Us 14. Analyzing the R Community A. References Index

Linear regression with continuous predictors

Let's start with an actual and illuminating example of confounding. Consider that we would like to predict the amount of air pollution based on the size of the city (measured in population size as thousand of habitants). Air pollution is measured by the sulfur dioxide (SO2) concentration in the air, in milligrams per cubic meter. We will use the US air pollution data set (Hand and others 1994) from the gamlss.data package:

> library(gamlss.data)
> data(usair)

Model interpretation

Let's draw our very first linear regression model by building a formula. The lm function from the stats package is used to fit linear models, which is an important tool for regression modeling:

> model.0 <- lm(y ~ x3, data = usair)
> summary(model.0)

Residuals:
    Min      1Q  Median      3Q     Max 
-32.545 -14.456  -4.019  11.019  72.549 

Coefficients:
             Estimate Std. Error t value Pr(>|t|)    
(Intercept) 17.868316   4.713844...
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