Introduction to R for Social Scientists

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A01=Philip D. Waggoner
A01=Ryan Kennedy
Age Group_Uncategorized
Age Group_Uncategorized
American National Election Study
Author_Philip D. Waggoner
Author_Ryan Kennedy
automatic-update
Barplot
Base R
Category1=Non-Fiction
Category=GPS
Category=PBT
Cook's Distance
Cook’s Distance
COP=United Kingdom
Cran Task View
CSV File
Delivery_Delivery within 10-20 working days
Democracy Score
Dplyr Package
EDA
eq_isMigrated=2
eq_nobargain
Exploring Data
Feeling Thermometer
Ggplot2 Package
Integrated Development Environment
Interactive Plots
John Fox
Language_English
Loess
LOF
OLS Regression
PA=Available
Price_€50 to €100
PS=Active
R programming
Real Survey Data
Regression Models
RStudio Integrated Development Environment
Social science research designs
softlaunch
Statistical modeling
Tidy approach
Tidy programming
User Defined Functions
Vice Versa
World Development Indicators Data Set

Product details

  • ISBN 9780367460723
  • Weight: 371g
  • Dimensions: 156 x 234mm
  • Publication Date: 09 Mar 2021
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
  • Language: English
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Introduction to R for Social Scientists: A Tidy Programming Approach introduces the Tidy approach to programming in R for social science research to help quantitative researchers develop a modern technical toolbox. The Tidy approach is built around consistent syntax, common grammar, and stacked code, which contribute to clear, efficient programming. The authors include hundreds of lines of code to demonstrate a suite of techniques for developing and debugging an efficient social science research workflow. To deepen the dedication to teaching Tidy best practices for conducting social science research in R, the authors include numerous examples using real world data including the American National Election Study and the World Indicators Data. While no prior experience in R is assumed, readers are expected to be acquainted with common social science research designs and terminology.

Whether used as a reference manual or read from cover to cover, readers will be equipped with a deeper understanding of R and the Tidyverse, as well as a framework for how best to leverage these powerful tools to write tidy, efficient code for solving problems. To this end, the authors provide many suggestions for additional readings and tools to build on the concepts covered. They use all covered techniques in their own work as scholars and practitioners.

Ryan Kennedy is an associate professor of political science at the University of Houston and a research associate for the Hobby Center for Public Policy. His work has appeared in top journals including Science, the American Political Science Review, and Journal of Politics. These articles have won several awards, including best paper in the American Political Science Review, and have been cited over 1,700 times. They have also drawn attention from media outlets like Time, the New York Times, and Smithsonian Magazine.

Philip Waggoner is an assistant instructional professor of computational social science at the University of Chicago and a visiting research scholar at ISERP at Columbia University. He is an Associate Editor at the Journal of Mathematical Sociology and the Journal of Open Research Software, and author of the forthcoming book, Unsupervised Machine Learning for Clustering in Political and Social Research (Cambridge University Press). His work has appeared or is forthcoming in many journals including the Journal of Politics, Journal of Mathematical Sociology, and Journal of Statistical Theory and Practice.

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