The STATA OMNIBUS: Regression and Modelling with STATA
The STATA OMNIBUS: Regression and Modelling with STATA, available at $79.99, has an average rating of 4.44, with 166 lectures, 1 quizzes, based on 794 reviews, and has 4960 subscribers.
You will learn about The theory behind linear and non-linear regression analysis. To be at ease with regression terminology. The assumptions and requirements of Ordinary Least Squares (OLS) regression. To comfortably interpret and analyse regression output from Ordinary Least Squares. To learn and understand how Logit and Probit models work. To learn tips and tricks around Non-Linear Regression analysis. Practical examples in Stata Tips for building regression models An introduction to Stata Data manipulation in Stata Data visualisation in Stata Data analysis in Stata Regression modelling in Stata Simulation in Stata Survival analysis Count Data analysis Categorical Data analysis Panel Data Analysis Epidemiology Instrumental Variables Power Analysis Difference-in-Differences This course is ideal for individuals who are Students working with data and quants or Anyone wanting to work with Stata or Anyone who wants to understand regression easily or Business managers using quantitative evidence or Those in the Economics/Politics/Social Sciences It is particularly useful for Students working with data and quants or Anyone wanting to work with Stata or Anyone who wants to understand regression easily or Business managers using quantitative evidence or Those in the Economics/Politics/Social Sciences.
Enroll now: The STATA OMNIBUS: Regression and Modelling with STATA
Summary
Title: The STATA OMNIBUS: Regression and Modelling with STATA
Price: $79.99
Average Rating: 4.44
Number of Lectures: 166
Number of Quizzes: 1
Number of Published Lectures: 166
Number of Published Quizzes: 1
Number of Curriculum Items: 167
Number of Published Curriculum Objects: 167
Number of Practice Tests: 1
Number of Published Practice Tests: 1
Original Price: £54.99
Quality Status: approved
Status: Live
What You Will Learn
- The theory behind linear and non-linear regression analysis.
- To be at ease with regression terminology.
- The assumptions and requirements of Ordinary Least Squares (OLS) regression.
- To comfortably interpret and analyse regression output from Ordinary Least Squares.
- To learn and understand how Logit and Probit models work.
- To learn tips and tricks around Non-Linear Regression analysis.
- Practical examples in Stata
- Tips for building regression models
- An introduction to Stata
- Data manipulation in Stata
- Data visualisation in Stata
- Data analysis in Stata
- Regression modelling in Stata
- Simulation in Stata
- Survival analysis
- Count Data analysis
- Categorical Data analysis
- Panel Data Analysis
- Epidemiology
- Instrumental Variables
- Power Analysis
- Difference-in-Differences
Who Should Attend
- Students working with data and quants
- Anyone wanting to work with Stata
- Anyone who wants to understand regression easily
- Business managers using quantitative evidence
- Those in the Economics/Politics/Social Sciences
Target Audiences
- Students working with data and quants
- Anyone wanting to work with Stata
- Anyone who wants to understand regression easily
- Business managers using quantitative evidence
- Those in the Economics/Politics/Social Sciences
Make sure to check out my twitter feed for monthly promo codes and other updates (@easystats3).
4 COURSES IN ONE!
Learn everything you need to know about linear regression, non-linear regression, regression modelling and STATA in one package.
Linear and Non-Linear Regression.
Learning and applying new statistical techniques can often be a daunting experience.
“Easy Statistics”is designed to provide you with a compact, and easy to understand, course that focuses on the basic principles of statistical methodology.
This course will focus on the concept of linear regression and non-linear regression. Specifically Ordinary Least Squares, Logit and Probit Regression.
This course will explain what regression is and how linear and non-liner regression works. It will examine how Ordinary Least Squares (OLS) works and how Logit and Probit models work. It will do this without any complicated equations or mathematics. The focus of this course is on application and interpretation of regression. The learning on this course is underpinned by animated graphics that demonstrate particular statistical concepts.
No prior knowledge is necessary and this course is for anyone who needs to engage with quantitative analysis.
The main learning outcomes are:
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To learn and understand the basic statistical intuition behind Ordinary Least Squares
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To be at ease with general regression terminology and the assumptions behind Ordinary Least Squares
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To be able to comfortably interpret and analyze complicated linear regression output from Ordinary Least Squares
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To learn tips and tricks around linear regression analysis
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To learn and understand the basic statistical intuition behind non-linear regression
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To learn and understand how Logit and Probit models work
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To be able to comfortably interpret and analyze complicated regression output from Logit and Probit regression
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To learn tips and tricks around non-linear Regression analysis
Specific topics that will be covered are:
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What kinds of regression analysis exist
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Correlation versus causation
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Parametric and non-parametric lines of best fit
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The least squares method
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R-squared
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Beta’s, standard errors
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T-statistics, p-values and confidence intervals
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Best Linear Unbiased Estimator
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The Gauss-Markov assumptions
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Bias versus efficiency
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Homoskedasticity
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Collinearity
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Functional form
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Zero conditional mean
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Regression in logs
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Practical model building
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Understanding regression output
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Presenting regression output
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What kinds of non-linear regression analysis exist
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How does non-linear regression work?
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Why is non-linear regression useful?
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What is Maximum Likelihood?
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The Linear Probability Model
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Logit and Probit regression
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Latent variables
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Marginal effects
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Dummy variables in Logit and Probit regression
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Goodness-of-fit statistics
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Odd-ratios for Logit models
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Practical Logit and Probit model building in Stata
The computer software Stata will be used to demonstrate practical examples.
Regression Modelling
Understanding how regression analysis works is only half the battle. There are many pitfalls to avoid and tricks to learn when modelling data in a regression setting. Often, it takes years of experience to accumulate these. In these sessions, we will examine some of the most common modelling issues. What is the theory behind them, what do they do and how can we deal with them? Each topic has a practical demonstration in Stata. Themes include:
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Fundamental of Regression Modelling – What is the Philosophy?
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Functional Form – How to Model Non-Linear Relationships in a Linear Regression
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Interaction Effects – How to Use and Interpret Interaction Effects
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Using Time – Exploring Dynamics Relationships with Time Information
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Categorical Explanatory Variables – How to Code, Use and Interpret them
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Dealing with Multicollinearity – Excluding and Transforming Collinear Variables
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Dealing with Missing Data – How to See the Unseen
The Essential Guide to Stata
Learning and applying new statistical techniques can be daunting experience.
This is especially true once one engages with “real life” data sets that do not allow for easy “click-and-go” analysis, but require a deeper level of understanding of programme coding, data manipulation, output interpretation, output formatting and selecting the right kind of analytical methodology.
In this course you will receive a comprehensive introduction to Stata and its various uses in modern data analysis. You will learn to understand the many options that Stata gives you in manipulating, exploring, visualizing and modelling complex types of data. By the end of the course you will feel confident in your ability to engage with Stata and handle complex data analytics. The focus of this course will consistently be on creating a “good practice” and emphasising the practical application – and interpretation – of commonly used statistical techniques without resorting to deep statistical theory or equations.
This course will focus on providing an overview of data analytics using Stata.
No prior engagement with is Stata needed. Some prior statistics knowledge will help but is not necessary.
Like for other professional statistical packages the course focuses on the proper application – and interpretation – of code.
The course is aimed at anyone interested in data analytics using Stata.
Some basic quantitative/statistical knowledge will be required; this is not an introduction to statistics course but rather the application and interpretation of such using Stata.
Topics covered include:
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Getting started with Stata
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Viewing and exploring data
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Manipulating data
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Visualising data
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Correlation and ANOVA
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Regression including diagnostics (Ordinary Least Squares)
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Regression model building
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Hypothesis testing
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Binary outcome models (Logit and Probit)
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Fractional response models (Fractional Logit and Beta Regression)
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Categorical choice models (Ordered Logit and Multinomial Logit)
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Simulation techniques (Random Numbers and Simulation)
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Count data models (Poisson and Negative Binomial Regression)
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Survival data analysis (Parametric, Cox-Proportional Hazard and Parametric Survival Regression)
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Panel data analysis (Long Form Data, Lags and Leads, Random and Fixed Effects, Hausman Test and Non-Linear Panel Regression)
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Difference-in-differences analysis (Difference-in-Difference and Parallel Trends)
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Instrumental variable regression (Endogenous Variables, Sample Selection, Non-Linear Endogenous Models)
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Epidemiological tables (Cohort Studies, Case-Control Studies and Matched Case-Control Studies)
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Power analysis (Sample Size, Power Size and Effect Size)
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Matrix operations (Matrix operators, Matrix functions, Matrix subscripting)
Course Curriculum
Chapter 1: Introduction
Lecture 1: Introduction
Chapter 2: Linear Regression
Lecture 1: What is Easy Statistics: Linear Regression?
Lecture 2: What is Linear Regression?
Lecture 3: Learning Outcomes
Lecture 4: Who is this Course for?
Lecture 5: Pre-requisites
Lecture 6: Using Stata
Lecture 7: What is Regression Analysis?
Lecture 8: What is Linear Regression?
Lecture 9: Why is Regression Analysis Useful?
Lecture 10: What Types of Regression Analysis Exist?
Lecture 11: Explaining Regression
Lecture 12: Lines of Best Fit
Lecture 13: Causality vs Correlation
Lecture 14: What is Ordinary Least Squares?
Lecture 15: Ordinary Least Squares Visual 1
Lecture 16: Ordinary Least Squares Visual 2
Lecture 17: Sum of Squares
Lecture 18: Best Linear Unbiased Estimator
Lecture 19: The Gauss-Markov Assumptions
Lecture 20: Homoskedasticity
Lecture 21: No Perfect Collinearity
Lecture 22: Linear in Parameters
Lecture 23: Zero Conditional Mean
Lecture 24: How to Test and Correct for Endogeneity
Lecture 25: The Gauss-Markov Assumptions Recap
Lecture 26: Stata – Applied Examples
Chapter 3: Non-Linear Regression
Lecture 1: What is Easy Statistics: Non-Linear Regression?
Lecture 2: What is Non-Linear Regression?
Lecture 3: What are the main learning outcomes?
Lecture 4: Who is this course for?
Lecture 5: Prerequisites
Lecture 6: Using Stata
Lecture 7: What is Non-Linear Regression analysis?
Lecture 8: How does Non-Linear Regression work?
Lecture 9: Why is Non-Linear Regression analysis useful?
Lecture 10: Types of Non-Linear Regression models
Lecture 11: Maximum Likelihood
Lecture 12: Linear Probability Model
Lecture 13: The Logit and Probit Transformation
Lecture 14: Latent Variables
Lecture 15: What are Marginal Effects?
Lecture 16: Dummy Explanatory Variables
Lecture 17: Multiple Non-Linear Regression
Lecture 18: Goodness-of-Fit
Lecture 19: A note about Logit Coefficients
Lecture 20: Tips for Logit and Probit Regression
Lecture 21: Back to the Linear Probability Model?
Lecture 22: Stata – Applied Logit and Probit Examples
Chapter 4: Regression Modelling
Lecture 1: Introduction
Lecture 2: Regression Modelling – Don't Rush It
Lecture 3: Functional Form – How to Model Non-Linear Relationships in a Linear Regression
Lecture 4: Functional Form – Stata Examples
Lecture 5: Interaction Effects – How to Use and Interpret Interaction Effects
Lecture 6: Interaction Effects – Stata Examples
Lecture 7: Using Time – Exploring Dynamics Relationships with Time Information
Lecture 8: Using Time – Stata Examples
Lecture 9: Categorical Explanatory Variables – How to Code, Use and Interpret them
Lecture 10: Categorical Explanatory Variables – Stata Examples
Lecture 11: Dealing with Multicollinearity – Excluding and Transforming Collinear Variables
Lecture 12: Dealing with Multicollinearity – Stata Examples
Lecture 13: Dealing with Missing Values – Seeing the Unseeable
Lecture 14: Dealing with Missing Values – Stata Examples
Chapter 5: Introduction to Stata: Getting Started
Lecture 1: Introduction
Lecture 2: The Stata Interface
Lecture 3: Using Help in Stata
Lecture 4: Command Syntax
Lecture 5: .do and .ado Files
Lecture 6: Log Files
Lecture 7: Importing Data
Chapter 6: Introduction to Stata: Exploring Data
Lecture 1: Viewing Raw Data
Lecture 2: Describing and Summarizing
Lecture 3: Missing Values
Lecture 4: Tabulating and Tables
Lecture 5: Numerical Distributional Analysis
Lecture 6: Using Weights
Lecture 7: The New Table Command (Stata 17)
Chapter 7: Introduction to Stata: Manipulating Data
Lecture 1: Recoding an Existing Variable
Lecture 2: Creating New Variables, Replacing Old Variables
Lecture 3: Naming and Labelling Variables
Lecture 4: Extensions to Generate
Lecture 5: Indicator Variables
Lecture 6: Keep and Drop Data/Variables
Lecture 7: Saving Data
Lecture 8: Converting String Data
Lecture 9: Combining Data
Lecture 10: Using Macro's and Loop's Effectively
Lecture 11: Accessing Stored Information
Lecture 12: Multiple Loops
Lecture 13: Date Variables
Lecture 14: Subscripting over Groups
Chapter 8: Introduction to Stata: Visualising Data
Lecture 1: Graphing in Stata
Instructors
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F. Buscha
Professor
Rating Distribution
- 1 stars: 9 votes
- 2 stars: 12 votes
- 3 stars: 82 votes
- 4 stars: 270 votes
- 5 stars: 421 votes
Frequently Asked Questions
How long do I have access to the course materials?
You can view and review the lecture materials indefinitely, like an on-demand channel.
Can I take my courses with me wherever I go?
Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!
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