YoVDO

Introduction to Stata 15

Offered By: LinkedIn Learning

Tags

Stata Courses Statistical Analysis Courses Inferential Statistics Courses Data Manipulation Courses

Course Description

Overview

Learn and apply basic statistical techniques using the popular statistics software Stata.

Syllabus

Introduction
  • Why you should use Stata
  • Prerequisites
  • How this course is taught
1. Getting Started
  • An overview of the interface
  • Customizing your preferences
  • Using help effectively
  • Command syntax
  • What are .do and .ado files?
  • Log files
  • Importing data
2. Exploring Data
  • Viewing raw data
  • Describing and summarizing
  • Tabulating and tables
  • Missing values
  • Distributional analysis (numerical)
  • Weights
  • Exploring data: Challenge
  • Exploring data: Solution
3. Manipulating Data
  • Recoding an existing variable
  • Generating a new variable
  • Naming and labeling variables
  • Extended generate
  • Indicator variables
  • Keeping and dropping variables
  • Saving data
  • Merging and appending
  • String variables
  • Local macros and looping
  • Manipulating data: Challenge
  • Manipulating data: Solution
4. Graphing in Stata
  • Introduction to graph commands
  • Bar graphs and dot charts
  • Distributional analysis (graphical)
  • Pie charts
  • Scatterplots and fitted lines
  • Contour plots
  • Geographic maps
  • Graphing in Stata: Challenge
  • Graphing in Stata: Solution
5. Basic Inferential Statistics
  • Statistics for two categorical variables
  • Tests for one or two means
  • Bivariate correlation and regression
  • Analysis of variance
  • Basic inferential statistics: Challenge
  • Basic inferential statistics: Solution
6. Ordinary Least Squares (OLS) Regression
  • OLS regression and interpretation
  • Categorical explanatory variables in OLS
  • OLS regression diagnostics
  • Exploring functional form in OLS regression
  • OLS hypothesis testing
  • Presenting OLS regression estimates
  • Ordinary least squares regression: Challenge
  • Ordinary least squares regression: Solution
7. Binary Outcome Models (Logit and Probit)
  • The linear probability, logit, and probit models
  • Diagnostics
  • Interpretation of coefficients and margins
  • Binary outcome models: Challenge
  • Binary outcome models: Solution
8. Categorical Choice Models
  • Ordered logit and ordered probit
  • Multinomial logit
  • Categorical choice models: Challenge
  • Categorical choice models: Solution
Conclusion
  • Next steps

Taught by

Franz Buscha

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