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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.

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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:

  1. To learn and understand the basic statistical intuition behind Ordinary Least Squares

  2. To be at ease with general regression terminology and the assumptions behind Ordinary Least Squares

  3. To be able to comfortably interpret and analyze complicated linear regression output from Ordinary Least Squares

  4. To learn tips and tricks around linear regression analysis

  5. To learn and understand the basic statistical intuition behind non-linear regression

  6. To learn and understand how Logit and Probit models work

  7. To be able to comfortably interpret and analyze complicated regression output from Logit and Probit regression

  8. To learn tips and tricks around non-linear Regression analysis

Specific topics that will be covered are:

  • What kinds of regression analysis exist

  • Correlation versus causation

  • Parametric and non-parametric lines of best fit

  • The least squares method

  • R-squared

  • Beta's, standard errors

  • T-statistics, p-values and confidence intervals

  • Best Linear Unbiased Estimator

  • The Gauss-Markov assumptions

  • Bias versus efficiency

  • Homoskedasticity

  • Collinearity

  • Functional form

  • Zero conditional mean

  • Regression in logs

  • Practical model building

  • Understanding regression output

  • Presenting regression output

  • What kinds of non-linear regression analysis exist

  • How does non-linear regression work?

  • Why is non-linear regression useful?

  • What is Maximum Likelihood?

  • The Linear Probability Model

  • Logit and Probit regression

  • Latent variables

  • Marginal effects

  • Dummy variables in Logit and Probit regression

  • Goodness-of-fit statistics

  • Odd-ratios for Logit models

  • 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:

  • Fundamental of Regression Modelling - What is the Philosophy?

  • Functional Form - How to Model Non-Linear Relationships in a Linear Regression

  • Interaction Effects - How to Use and Interpret Interaction Effects

  • Using Time - Exploring Dynamics Relationships with Time Information

  • Categorical Explanatory Variables - How to Code, Use and Interpret them

  • Dealing with Multicollinearity - Excluding and Transforming Collinear Variables

  • 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 class 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.

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 will include:

  1. Getting started with Stata

  2. Viewing and exploring data

  3. Manipulating data

  4. Visualising data

  5. Correlation and ANOVA

  6. Regression including diagnostics (Ordinary Least Squares)

  7. Regression model building

  8. Hypothesis testing

  9. Binary outcome models (Logit and Probit)

  10. Categorical choice models (Ordered Logit and Multinomial Logit)

  11. Simulation techniques

  12. Count data models

  13. Survival data analysis

  14. Panel data analysis

  15. Power analysis

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Good to know

Know what's good
, what to watch for
, and possible dealbreakers
Concentrates on foundational principles of linear and non-linear regression
Covers advanced topics like regression in logs and functional form
Utilizes Stata software to demonstrate practical examples
Provides a comprehensive introduction to Stata for data analysis
Suitable for individuals with some prior statistics knowledge
May require additional software or resources for certain assignments

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Activities

Be better prepared before your course. Deepen your understanding during and after it. Supplement your coursework and achieve mastery of the topics covered in The STATA OMNIBUS: Regression and Modelling with STATA with these activities:
Read 'Regression Analysis by Example' by Chatterjee and Hadi
This book provides a comprehensive overview of regression analysis, including both linear and non-linear models.
Show steps
  • Read the book and take notes on the key concepts.
  • Work through the practice problems at the end of each chapter.
  • Apply the concepts to your own data.
Review statistical concepts
The course requires an understanding of linear and non-linear regression models, this will help strengthen your knowledge in these areas.
Browse courses on Linear Regression
Show steps
  • Review your notes from previous statistics courses.
  • Go through the course syllabus and identify the key statistical concepts that will be covered.
  • Spend some time reading the textbook chapters or online resources on these concepts.
  • Complete any practice problems or exercises that are available.
  • Attend any review sessions or office hours offered by your instructor.
Watch tutorials on regression analysis
Watching tutorials can help you to understand the concepts of regression analysis in a clear and concise way.
Show steps
  • Find tutorials on YouTube, Coursera, or other online platforms.
  • Watch the tutorials and take notes on the key concepts.
  • Pause the tutorials and try to apply the concepts to your own data.
Five other activities
Expand to see all activities and additional details
Show all eight activities
Form a study group with classmates
Working with peers can help you to learn from each other and reinforce the concepts of regression analysis.
Show steps
  • Find a few classmates who are also taking the course.
  • Meet regularly to discuss the course material and work on practice problems together.
  • Take turns leading the study group and presenting the material.
Solve regression problems
Complete as many regression practice questions as possible to improve your understanding and problem-solving skills.
Show steps
  • Find practice questions from textbooks, online resources, or previous exams.
  • Solve the problems on your own, without looking at the solutions.
  • Check your answers against the solutions and identify any areas where you need more practice.
  • Repeat the process until you can consistently solve the problems correctly.
Create a regression model for a real-world problem
This will give you hands-on experience applying regression analysis to solve a real-world problem, which will help you to develop a deeper understanding of the concepts.
Show steps
  • Identify a real-world problem that you can solve using regression analysis.
  • Collect data on the relevant variables.
  • Clean and prepare the data for analysis.
  • Build a regression model to predict the outcome variable.
  • Evaluate the performance of the model and make any necessary adjustments.
Offer to tutor other students in regression analysis
Teaching others can help you to solidify your understanding of the concepts of regression analysis.
Show steps
  • Identify students who are struggling with the material.
  • Offer to help them by providing tutoring sessions.
  • Go over the concepts of regression analysis and work through practice problems together.
Contribute to an open-source regression project
This will give you exposure to real-world regression problems and help you to develop your coding skills.
Show steps
  • Find an open-source regression project that you are interested in contributing to.
  • Read the project documentation and identify an area where you can make a contribution.
  • Fork the project and make your changes.
  • Submit a pull request to the project maintainers.

Career center

Learners who complete The STATA OMNIBUS: Regression and Modelling with STATA will develop knowledge and skills that may be useful to these careers:
Quantitative Analyst
As a Quantitative Analyst, you will use statistical models and data analysis to make informed decisions about investments and financial strategies. The STATA OMNIBUS: Regression and Modelling with STATA course provides a comprehensive foundation in regression analysis including Logit and Probit models, which are essential for understanding complex relationships in data. Additionally, the course covers topics such as functional form, interaction effects, and dealing with multicollinearity, which are all crucial for developing robust and accurate models in financial analysis.
Data Analyst
Data Analysts are responsible for collecting, cleaning, and analyzing data to derive insights and inform decision-making. The STATA OMNIBUS: Regression and Modelling with STATA course provides a strong foundation in statistical analysis techniques, including regression modeling and hypothesis testing. The course also covers essential topics such as data manipulation, visualization, and simulation techniques, which are essential for effective data analysis in various industries.
Statistical Modeler
Statistical Modelers develop and apply statistical models to solve real-world problems, such as predicting consumer behavior or optimizing business processes. The STATA OMNIBUS: Regression and Modelling with STATA course provides comprehensive training in regression analysis, including linear and non-linear regression, as well as model building and diagnostics. The course also covers topics such as dealing with missing data and multicollinearity, which are common challenges faced by Statistical Modelers.
Market Research Analyst
Market Research Analysts gather and interpret data on consumer behavior and market trends to provide insights for businesses. The STATA OMNIBUS: Regression and Modelling with STATA course provides a solid foundation in statistical analysis and modeling techniques, including regression analysis and hypothesis testing. The course also covers topics such as using time and categorical explanatory variables, which are particularly useful in market research analysis.
Biostatistician
Biostatisticians apply statistical methods to analyze medical and health-related data. The STATA OMNIBUS: Regression and Modelling with STATA course provides a comprehensive foundation in regression analysis and modeling techniques, including linear and non-linear regression. The course also covers essential topics such as dealing with missing data and multicollinearity, which are common challenges faced by Biostatisticians.
Economist
Economists analyze economic data and trends to forecast economic outcomes and develop policies. The STATA OMNIBUS: Regression and Modelling with STATA course provides a strong foundation in regression analysis and modeling techniques, which are essential for economic analysis. The course also covers topics such as using time and categorical explanatory variables, which are particularly useful in economic modeling.
Financial Analyst
Financial Analysts evaluate and make recommendations on investments and financial strategies. The STATA OMNIBUS: Regression and Modelling with STATA course provides a comprehensive foundation in regression analysis and modeling techniques, which are essential for understanding complex relationships in financial data. The course also covers topics such as dealing with missing data and multicollinearity, which are common challenges faced by Financial Analysts.
Operations Research Analyst
Operations Research Analysts use mathematical and analytical techniques to solve complex business problems and improve efficiency. The STATA OMNIBUS: Regression and Modelling with STATA course provides a solid foundation in statistical analysis and modeling techniques, which are essential for Operations Research analysis. The course also covers topics such as simulation techniques, which are particularly useful in Operations Research.
Actuary
Actuaries use statistical and mathematical techniques to assess risk and uncertainty in the insurance and financial industries. The STATA OMNIBUS: Regression and Modelling with STATA course provides a comprehensive foundation in regression analysis and modeling techniques, which are essential for actuarial work. The course also covers topics such as dealing with missing data and multicollinearity, which are common challenges faced by Actuaries.
Data Scientist
Data Scientists use statistical and computational techniques to extract insights from data. The STATA OMNIBUS: Regression and Modelling with STATA course may be helpful for Data Scientists who wish to develop a deeper understanding of regression analysis and modeling techniques. The course covers topics such as linear and non-linear regression, as well as model building and diagnostics, which are foundational concepts in Data Science.
Machine Learning Engineer
Machine Learning Engineers design and build machine learning models to solve complex problems. The STATA OMNIBUS: Regression and Modelling with STATA course may be helpful for Machine Learning Engineers who wish to develop a stronger foundation in statistical modeling techniques. The course covers topics such as linear and non-linear regression, as well as model building and diagnostics, which are essential concepts for understanding how machine learning models work.
Business Analyst
Business Analysts use data and analytics to identify and solve business problems. The STATA OMNIBUS: Regression and Modelling with STATA course may be helpful for Business Analysts who wish to develop a stronger understanding of regression analysis and modeling techniques. The course covers topics such as linear and non-linear regression, as well as model building and diagnostics, which are valuable skills for Business Analysts.
Software Engineer
Software Engineers design, develop, and maintain software systems. While the STATA OMNIBUS: Regression and Modelling with STATA course is not directly related to software engineering, it may be helpful for Software Engineers who wish to develop a deeper understanding of statistical modeling techniques. The course covers topics such as linear and non-linear regression, as well as model building and diagnostics, which are foundational concepts in data analysis and machine learning.
Statistician
Statisticians use statistical methods to analyze data and draw conclusions. While the STATA OMNIBUS: Regression and Modelling with STATA course is designed for beginners, it may be helpful for Statisticians who wish to refresh their knowledge of regression analysis and modeling techniques. The course covers topics such as linear and non-linear regression, as well as model building and diagnostics, which are essential concepts in Statistics.
Epidemiologist
Epidemiologists investigate the causes and patterns of health and disease in populations. The STATA OMNIBUS: Regression and Modelling with STATA course may be helpful for Epidemiologists who wish to develop a stronger foundation in statistical modeling techniques. The course covers topics such as linear and non-linear regression, as well as model building and diagnostics, which are valuable skills for Epidemiologists.

Reading list

We've selected 13 books that we think will supplement your learning. Use these to develop background knowledge, enrich your coursework, and gain a deeper understanding of the topics covered in The STATA OMNIBUS: Regression and Modelling with STATA.
Provides a comprehensive overview of statistical learning methods, including regression, classification, and clustering. It valuable resource for students and practitioners who want to learn more about these methods.
Provides a comprehensive overview of statistical learning methods, including regression, classification, and clustering. It valuable resource for students and practitioners who want to learn more about these methods.
Provides a comprehensive treatment of generalized linear models, which are a powerful class of models that can be used to analyze a wide variety of data types. It valuable resource for students and practitioners who want to learn more about these methods.
Provides a unique perspective on regression analysis, focusing on the philosophical and practical issues that arise when using these models. It valuable resource for students and practitioners who want to learn more about these methods.
Provides a comprehensive treatment of regression analysis, including both linear and generalized linear models. It valuable resource for students and practitioners who want to learn more about these methods.
Provides a comprehensive treatment of causal inference, which powerful statistical method that can be used to identify the causal effects of variables. It valuable resource for students and practitioners who want to learn more about these methods.
Provides a comprehensive treatment of linear models, which are a powerful class of models that can be used to analyze a wide variety of data types. It valuable resource for students and practitioners who want to learn more about these methods.
Provides a comprehensive treatment of survival analysis, which statistical method that can be used to analyze the time until an event occurs. It valuable resource for students and practitioners who want to learn more about these methods.
Provides a comprehensive treatment of econometric analysis of cross-section and panel data. It valuable resource for students and practitioners who want to learn more about these methods.
Provides a comprehensive treatment of multivariate analysis of variance, which powerful statistical method that can be used to analyze the effects of multiple variables on a single outcome. It valuable resource for students and practitioners who want to learn more about these methods.
Provides a comprehensive introduction to regression analysis using the R statistical software. It valuable resource for students and practitioners who want to learn more about these methods.
Provides a comprehensive treatment of regression analysis, including both linear and nonlinear regression models. It valuable resource for students and practitioners who want to learn more about these methods.

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