Data Analysis for Policymakers: How to Use Data to Inform and Evaluate Policies

Introduction:

This course will introduce you to the concept and practice of data analysis for policymakers, which is the application of data analysis and visualization techniques to inform and evaluate policies. You will learn how to use data analysis tools and methods, such as R, ggplot2, Excel, and Power BI, to collect, clean, explore, and interpret data from various sources, such as surveys, reports, databases, etc. You will also learn how to use data storytelling skills, such as narrative, context, visuals, and interactivity, to communicate your policy analysis and recommendations to different audiences.

  • Understand the principles and benefits of data analysis for policymaking
  • Identify and formulate relevant policy questions that can be answered by data
  • Use R and ggplot2 to create effective and attractive data visualizations
  • Use Excel and Power BI to perform basic data analysis techniques, such as descriptive statistics, probability distributions, hypothesis testing, and regression analysis
  • Use R to perform advanced data analysis techniques, such as microsimulation modeling, policy options analysis, and program evaluation
  • Use data storytelling techniques to communicate and persuade your audience with data
  • Avoid common mistakes and pitfalls in data analysis and visualization

To enhance learning and practical application of concepts, the training course will use a combination of interactive lectures, case studies, group discussions, practical exercises, and real-world examples. Participants will also get the chance to collaborate on group projects and create action plans adapted to the needs of their respective organizations.

Day One:

Introduction to Data Analysis for Policymakers

  • What is data analysis and why does it matter for policymaking?
  • Data analysis process and pipeline
  • Data types, sources, and quality
  • Data analysis tools and platforms
  • Data analysis applications and use cases in various policy domains

Day Two:

Data Visualization with R and ggplot2

  • What are R and ggplot2 and how to use them for data visualization?
  • Grammar of graphics and aesthetics
  • Geometric objects, scales, facets, coordinates, themes, etc.
  • Plotting univariate, bivariate, multivariate, categorical, numerical, temporal, spatial, etc. data
  • Customizing and saving visualizations

Day Three:

Data Analysis with Excel and Power BI

  • What are Excel and Power BI and how to use them for data analysis?
  • Data structures and manipulation
  • Descriptive statistics and probability distributions
  • Hypothesis testing and statistical inference
  • Linear regression and correlation analysis

Day Four:

Data Analysis with R

  • What is R and how to use it for data analysis?
  • Data structures and manipulation
  • Microsimulation modeling: creating synthetic populations and scenarios
  • Policy options analysis: comparing costs and benefits of alternative policies
  • Program evaluation: measuring the impact of policies using experimental or quasi-experimental designs

Day Five:

Data Storytelling with Data

  • What is data storytelling and why is it important for communicating policy analysis and recommendations?
  • Data storytelling principles and practices
  • Data storytelling tools and platforms
  • Data storytelling techniques: narrative, context, visuals, interactivity, etc.
  • Data storytelling examples and best practices

To enhance learning and practical application of concepts, the training course will use a combination of interactive lectures, case studies, group discussions, practical exercises, and real-world examples. Participants will also get the chance to collaborate on group projects and create action plans adapted to the needs of their respective organizations.

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