<p class="MsoNormal" style="text-align: justify;"><span style="font-size: 11.0pt; font-family: 'Calibri',sans-serif;">This book teaches R programming for fundamental statistical and data analysis skills, specifically tailored to social scientists and others new to quantitative research. Traditionally, this audience has relied on costly software packages such as SPSS, STATA, and SAS. However, R is a free, open-source alternative that, with proper guidance, is accessible and powerful for their needs. Many existing resources, whether books or online, are overly technical or difficult to follow. This book fills that gap by offering a concise, practical guide to mastering essential statistical processes, equipping readers with skills they can use throughout their careers.</span></p><p class="MsoNormal" style="text-align: justify;"><span style="font-size: 11.0pt; font-family: 'Calibri',sans-serif;">Data analysts, institutional researchers, and other professionals will use the book to perform statistical analyses and generate reports for their organizations. The included code—both in the book and online—helps them apply techniques to their own data. Readers will gain the following skills:</span></p><ul><li class="MsoNormal" style="text-align: justify;"><span style="font-size: 11.0pt; font-family: 'Calibri',sans-serif;">Install and set up R and RStudio; write R scripts and create R Markdown documents.</span></li><li class="MsoNormal" style="text-align: justify;"><span style="font-size: 11.0pt; font-family: 'Calibri',sans-serif;">Understand variable types, measurement scales, and the basics of descriptive and inferential statistics.</span></li><li class="MsoNormal" style="text-align: justify;"><span style="font-size: 11.0pt; font-family: 'Calibri',sans-serif;">Conduct chi-square tests, t-tests, ANOVA, regression, and time series analysis in R.</span></li><li class="MsoNormal" style="text-align: justify;"><span style="font-size: 11.0pt; font-family: 'Calibri',sans-serif;">Assess and interpret statistical outputs; write results in APA format.</span></li><li class="MsoNormal" style="text-align: justify;"><span style="font-size: 11.0pt; font-family: 'Calibri',sans-serif;">Visualize data using ggplot2 and related libraries; create publication-ready charts and tables</span></li><li class="MsoNormal" style="text-align: justify;"><span style="font-size: 11.0pt; font-family: 'Calibri',sans-serif;">Evaluate statistical assumptions and apply techniques responsibly to real-world datasets</span></li><li class="MsoNormal" style="text-align: justify;"><span style="font-size: 11.0pt; font-family: 'Calibri',sans-serif;">Communicate findings clearly and concisely using professional standards</span></li></ul>

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Using R for Introductory Statistics in Social Sciences

  • Mark A. Perkins

摘要

This book teaches R programming for fundamental statistical and data analysis skills, specifically tailored to social scientists and others new to quantitative research. Traditionally, this audience has relied on costly software packages such as SPSS, STATA, and SAS. However, R is a free, open-source alternative that, with proper guidance, is accessible and powerful for their needs. Many existing resources, whether books or online, are overly technical or difficult to follow. This book fills that gap by offering a concise, practical guide to mastering essential statistical processes, equipping readers with skills they can use throughout their careers.

Data analysts, institutional researchers, and other professionals will use the book to perform statistical analyses and generate reports for their organizations. The included code—both in the book and online—helps them apply techniques to their own data. Readers will gain the following skills:

  • Install and set up R and RStudio; write R scripts and create R Markdown documents.
  • Understand variable types, measurement scales, and the basics of descriptive and inferential statistics.
  • Conduct chi-square tests, t-tests, ANOVA, regression, and time series analysis in R.
  • Assess and interpret statistical outputs; write results in APA format.
  • Visualize data using ggplot2 and related libraries; create publication-ready charts and tables
  • Evaluate statistical assumptions and apply techniques responsibly to real-world datasets
  • Communicate findings clearly and concisely using professional standards