image
The Ultimate Drawing Course Beginner to Advanced...
$179
$79
image
User Experience Design Essentials - Adobe XD UI UX...
$179
$79
Total:
$659

Description

Updates
:
November 2024: 
All Python tutorials have been remade and are up to date.
Econometrics has horrible fame. The complex theorems, combined with boring classes where it feels like you are learning Greek, give every student nightmares. This course stays away from that. It will focus on (1)
giving you the intuition
and tools to apply the techniques learned, (2)
making sure everything that you learn is actionable in your career,
and (3) offer you a tool kit of peer-reviewed econometric causal inference techniques that will
make you stand out and give you the ability to answer the tough questions
.
WHY ECONOMETRICS AND CAUSAL INFERENCE FOR BUSINESS IN R AND Python?
In each section, you will learn a new technique.
The learning process is split into three parts
. The first is an overview of
Use Cases
. Drawing from business literature and my own experience, I will show examples where each Econometric technique has been applied. The goal here is to show that Econometric methods are actionable. The second part is the
Intuition tutorials
. The aim is for you to understand why the technique makes sense. All intuition tutorials are based on business situations. The last part is the
Practice tutorials
, where we will
code and solve a business or economic problem
. There will be at least one practice tutorial per section.
Below are 4 points on why this course is not only relevant but also stands out from others.
1| THOROUGH COURSE STRUCTURE OF MOST IMPACTFUL ECONOMETRIC TECHNIQUES
The techniques in this course are the ones I believe will be most impactful in your career. Like
HR, Marketing, Finance, or Operations, all company departments
can use these causal techniques. Here is the list:
Difference-in-differences
Google's Causal Impact
Granger Causality
Propensity Score Matching
CHAID
2| BUSINESS EXAMPLES TO FOSTER INTUITION
Each section starts with an overview of business cases and studies where each econometric technique has been used.
I will use examples that come from my own professional experience
and business literature. The aim is to give you the intuition where to apply them in your current job. By the end of each intuition tutorial,
you will be able to easily explain the concepts to your colleagues, manager, and stakeholders
.
One of the benefits of giving actual business problems as examples is that you will find similar or even equal issues in your current company. In turn, this enables you to apply what you have learned immediately. Here are some examples:
Impact of M&A on companies.
Understanding how weather influences sales.
Measuring the impact of brand campaigns.
Whether Influencer or Social Media Marketing results in sales.
Investigating the drivers of customer satisfaction.
3| CHALLENGING AND INTERESTING PROBLEMS TO APPLY WHAT YOU LEARNED
For each section, we will have at least one real business or economic dataset. We will apply what we learned during the intuition tutorials.
Here are some examples of problems we will solve and code together:
Measuring the impact of the Cambridge Analytica Scandal on Facebook's stock price
.
Assessing the results of giving training to employees.
Challenge the idea that increasing the minimum wage decreases employment.
Ranking the drivers on why people quit their jobs.
Solving the thousand-year-old riddle of who came first: "Chicken or the egg?".
4| HANDS-ON CODING
We will code together, in R and Python. In every single practice tutorial, we will start from scratch, building the code line by line. As also an online coding student, I feel this has been
the easiest way to learn
.
On top, the code will be built so that you download it and
apply the causal inference techniques in your work and projects
. Additionally, I will explain what you have to change to use in your dataset and solve the problem you have at hand.
Econometrics for Business in R and Python is a course that naturally extends into your career.
***SUMMARY
The course is packed with use cases, intuition tutorials, hands-on coding, and, most importantly, is actionable in your career
.
Feel free to reach out if you have any questions, and I hope to see you inside!
Diogo
Who this course is for:
Students or recent graduates interested in Econometrics and Data Science
Data Scientists that would like to learn econometrics
Business Analysts wanting to make a difference in their current job
People curious about Econometrics and Data Science
Professionals who would like to know more about analytics

What you'll learn

Understand the application of econometric techniques in business settings

Apply Google's Causal Impact to measure the effect of an intervention on a time series.

Code econometric techniques in R and Python from scratch.

Solve real business or economic problems using econometric techniques.

Use propensity score matching to compare outcomes between groups while controlling for confounding variables.

Develop an intuitive understanding of Difference-in-differences, Google's Causal Impact, Granger Causality, Propensity Score Matching, and CHAID

Perform Granger causality to test for causality between two time series.

Develop intuition for econometric techniques through business case studies.

Practice coding and applying econometric techniques through challenging and interesting problems.

Understand and apply basic statistical concepts and techniques in real-life business cases

Requirements

  • You will need a copy of Adobe XD 2019 or above. A free trial can be downloaded from Adobe.
  • No previous design experience is needed.
  • No previous Adobe XD skills are needed.

Course Content

27 sections • 95 lectures
Expand All Sections
1-Introduction
6
1.1-Course introduction and structure
1.2-Course content
1.3-Installing R and RStudio
1.4-Installing Python and Spyder
1.5-Diogo's Introduction and Background
1.6-Future of this course and reviews
2-Difference-in-differences - Intuition tutorial - Case Study 1
8
2.1-Difference-in-differences use cases
2.2-Difference-in-Differences framework
2.3-Modelling Difference-in-differences
2.4-Difference-in-differences assumptions
2.5-Difference-in-differences step by step guide
2.6-Linear Regression crash course
2.7-Linear Regression output summary
2.8-Dummy variable trap
3-Difference-in-differences - R tutorial - Case Study 1
8
3.1-Getting dataset and code templates folder
3.2-Intro to RStudio and data loading
3.3-Dealing with NAs part 1
3.4-Dealing with NAs part 2
3.5-First linear regression model
3.6-Second linear regression model and dummy variable trap
3.7-Last linear regression
3.8-Presenting results
4-Difference-in-differences - Python tutorial - Case Study 1
11
4.1-Getting datasets and code templates folder
4.2-Python - Setup
4.3-Python - Data Analysis and Processing
4.4-Google Sheets - How DiD Works
4.5-Python - First Linear Regression Model
4.6-Python - Visualizating the Model Output Part 1
4.7-Python - Visualizating the Model Output Part 2
4.8-Python - Second Regression Model
4.9-Python - Third Regression Model
4.10-Will you help me?
4.11-Your feedback is valuable
5-Difference-in-differences - Intuition tutorial - Case Study 2
3
5.1-Introducing second case study
5.2-Logistic Regression crash course
5.3-Placebo test mechanics
6-Difference-in-differences - R tutorial - Case Study 2
8
6.1-Getting datasets and code templates folder
6.2-Loading data and inspecting it
6.3-Defining variables
6.4-First Logistic Regression in R
6.5-Second Logistic Regression Model
6.6-Visualizing results
6.7-Preparing variables and dataset for placebo experiment
6.8-Logistic Regression and Placebo experiment
7-Difference-in-differences - Python tutorial - Case Study 2
8
7.1-Python - Setup
7.2-Python - Data Processing
7.3-Python - First Logistic Regression Model
7.4-Python - Visualizating the Model Output Part 1
7.5-Python - Visualizating the Model Output Part 2
7.6-Python - Second Model
7.7-Python - Placebo Experiment
7.8-Python - Visualizing the Placebo Experiment
8-Google Causal Impact - Intuition tutorial
4
8.1-Introducing Causal Impact
8.2-Value added of Causal Impact
8.3-Step by step application guide
8.4-Case study briefing
9-Google Causal Impact - R tutorial
10
9.1-Getting dataset and code templates folder
9.2-Code Update
9.3-Loading Facebook's stock price
9.4-Loading more stock prices
9.5-Plotting stock prices
9.6-Correlation Matrix
9.7-Choosing control group
9.8-Preparing dataset to run Causal Impact
9.9-Calculating the impact
9.10-Interpreting Causal Impact results
10-Google Causal Impact - Python tutorial
8
10.1-Getting datasets and code templates folder
10.2-Python - Google Causal Impact Setup
10.3-Python - Loading Financial Data
10.4-Python - Data Processing
10.5-Stationarity
10.6-Python - Stationarity
10.7-Python - Correlation Matrix and Heatmap
10.8-Python - Google Causal Impact
11-Granger Causality - Intuition tutorial
5
11.1-Granger Causality use cases
11.2-Problem statement
11.3-Correlation is not causality!
11.4-Granger Causality framework
11.5-Granger Causality step by step guide and case study briefing
12-Granger Causality - R tutorial
7
12.1-Getting dataset and code templates folder
12.2-Loading and inspecting data
12.3-Plotting time series
12.4-Stationarity check
12.5-Applying Granger Causality
12.6-Optimal number of lags and for loop part 1
12.7-Optimal number of lags and for loop part 2
13-Granger Causality - Python tutorial
8
13.1-Getting datasets and code templates folder
13.2-Python - Setup
13.3-Python - Data Processing and Visualization
13.4-Python - Stationarity
13.5-Python - Granger Causality Setup
13.6-Python - Granger Causality
13.7-Python - Extracting Granger Causality Results
13.8-Python - Visualizing Granger Causality Results
14-Propensity Score Matching - Intuition tutorial
7
14.1-Propensity Score Matching use cases
14.2-Problem statement
14.3-Propensity Score Matching framework
14.4-Unconfoundness and Common Support Region
14.5-Propensity Score Matching step by step guide
14.6-T-test crash course
14.7-Case study briefing
15-Propensity Score Matching - R tutorial
13
15.1-Getting dataset and code templates folder
15.2-Loading data
15.3-Average income in 78 per group
15.4-Summary of Confounders' averages
15.5-T-Test function
15.6-Logistic Regression
15.7-Creating dataframe for common support region
15.8-Common Support Region
15.9-Propensity Score Matching
15.10-Propensity Score Matching Summary
15.11-T-Test on the matched groups
15.12-Impact assessment
15.13-Robustness check
16-Propensity Score Matching - Python tutorial
8
16.1-Getting datasets and code templates folder
16.2-Python - Setup
16.3-Python - Descriptive Statistics
16.4-Python - T-Tests
16.5-Python - Propensity Scores
16.6-Python - Common Support Region
16.7-Python - Propensity Score Matching with Uber Causal ML
16.8-Python - Uber CausalML Results
17-CHAID - Intuition tutorial
7
17.1-CHAID use cases
17.2-Problem statement
17.3-CHAID Framework
17.4-How CHAID works
17.5-Confusion Matrix
17.6-CHAID step by step guide
17.7-Case study briefing
18-CHAID - R tutorial
17
18.1-Getting dataset and code templates folder
18.2-Loading data and analysis
18.3-Data structure and summary statistics
18.4-Forming factor only dataset
18.5-On installing CHAID
18.6-First CHAID model
18.7-Plotting CHAID
18.8-Chi-square test
18.9-Accuracy, sensitivity and specificity
18.10-Driver Importance
18.11-Transforming numeric into factors part 1
18.12-Second CHAID model
18.13-Density plot for numerical variables
18.14-Transforming numeric into factors part 2
18.15-Transforming numeric into factors part 3
18.16-Third CHAID model
18.17-End of Course Feedback
19-Bonus Section
1
19.1-Bonus Lecture