Data Analysis for Social Science

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A01=Elena Llaudet
A01=Kosuke Imai
Alternative hypothesis
Author_Elena Llaudet
Author_Kosuke Imai
Average treatment effect
Bias of an estimator
Category=GBC
Category=GPH
Category=JHBC
Causality
Class size
Coding (social sciences)
Comma-separated values
Computer performance
Confidence interval
Control variable
Cosmic Evolution (book)
Data analysis
Data science
Data set
Demography
Descriptive statistics
Education policy
Epidemiology
eq_bestseller
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
eq_society-politics
Estimation
Estimator
Experiment
Explanation
Gravity Recovery and Interior Laboratory
Gross domestic product
Instance (computer science)
Instruction set
Language interpretation
Likelihood function
Linear regression
Mathematical notation
Normal distribution
Notation
Null hypothesis
Observational study
P-value
Parameter
Parameter (computer programming)
Percentage point
Population Characteristics
Prediction
Predictive modelling
Private sector
Probability
Programming language
Proportionality (mathematics)
Quantitative research
Quantity
Randomized experiment
Result
RStudio
Sampling (statistics)
Sampling distribution
Social science
Social Science Research
Socioeconomics
Statistic
Statistical hypothesis testing
Statistical significance
Statistics
Supply (economics)
Survey methodology
Test score
Test statistic
Treatment and control groups
Uncertainty
Units of measurement
Utilization
Variable (computer science)
Variable (mathematics)
Voting behavior

Product details

  • ISBN 9780691199429
  • Dimensions: 203 x 254mm
  • Publication Date: 29 Nov 2022
  • Publisher: Princeton University Press
  • Publication City/Country: US
  • Product Form: Hardback
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An ideal textbook for complete beginners—teaches from scratch R, statistics, and the fundamentals of quantitative social science

Data Analysis for Social Science provides a friendly introduction to the statistical concepts and programming skills needed to conduct and evaluate social scientific studies. Assuming no prior knowledge of statistics and coding and only minimal knowledge of math, the book teaches the fundamentals of survey research, predictive models, and causal inference while analyzing data from published studies with the statistical program R. It teaches not only how to perform the data analyses but also how to interpret the results and identify the analyses’ strengths and limitations.

  • Progresses by teaching how to solve one kind of problem after another, bringing in methods as needed. It teaches, in this order, how to (1) estimate causal effects with randomized experiments, (2) visualize and summarize data, (3) infer population characteristics, (4) predict outcomes, (5) estimate causal effects with observational data, and (6) generalize from sample to population.
  • Flips the script of traditional statistics textbooks. It starts by estimating causal effects with randomized experiments and postpones any discussion of probability and statistical inference until the final chapters. This unconventional order engages students by demonstrating from the very beginning how data analysis can be used to answer interesting questions, while reserving more abstract, complex concepts for later chapters.
  • Provides a step-by-step guide to analyzing real-world data using the powerful, open-source statistical program R, which is free for everyone to use. The datasets are provided on the book’s website so that readers can learn how to analyze data by following along with the exercises in the book on their own computer.
  • Assumes no prior knowledge of statistics or coding.
  • Specifically designed to accommodate students with a variety of math backgrounds. It includes supplemental materials for students with minimal knowledge of math and clearly identifies sections with more advanced material so that readers can skip them if they so choose.
  • Provides cheatsheets of statistical concepts and R code.
  • Comes with instructor materials (upon request), including sample syllabi, lecture slides, and additional replication-style exercises with solutions and with the real-world datasets analyzed.

Looking for a more advanced introduction? Consider Quantitative Social Science by Kosuke Imai. In addition to covering the material in Data Analysis for Social Science, it teaches diffs-in-diffs models, heterogeneous effects, text analysis, and regression discontinuity designs, among other things.

Elena Llaudet is Associate Professor of Political Science at Suffolk University in Boston. Kosuke Imai is Professor of Government and of Statistics at Harvard University.

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