Causal Data Science with Directed Acyclic Graphs
Causal Data Science with Directed Acyclic Graphs, available at $59.99, has an average rating of 4.48, with 27 lectures, based on 493 reviews, and has 2948 subscribers.
You will learn about Causal inference in data science and machine learning How to work with directed acylic graphs (DAG) Newest developments in causal AI This course is ideal for individuals who are Data scientists or Economists or Computer Scientists or People intersted in machine learning It is particularly useful for Data scientists or Economists or Computer Scientists or People intersted in machine learning.
Enroll now: Causal Data Science with Directed Acyclic Graphs
Summary
Title: Causal Data Science with Directed Acyclic Graphs
Price: $59.99
Average Rating: 4.48
Number of Lectures: 27
Number of Published Lectures: 27
Number of Curriculum Items: 27
Number of Published Curriculum Objects: 27
Original Price: €19.99
Quality Status: approved
Status: Live
What You Will Learn
- Causal inference in data science and machine learning
- How to work with directed acylic graphs (DAG)
- Newest developments in causal AI
Who Should Attend
- Data scientists
- Economists
- Computer Scientists
- People intersted in machine learning
Target Audiences
- Data scientists
- Economists
- Computer Scientists
- People intersted in machine learning
This course offers an introduction into causal data science with directed acyclic graphs (DAG). DAGs combine mathematical graph theory with statistical probability concepts and provide a powerful approach to causal reasoning. Originally developed in the computer science and artificial intelligence field, they recently gained increasing traction also in other scientific disciplines (such as machine learning, economics, finance, health sciences, and philosophy). DAGs allow to check the validity of causal statements based on intuitive graphical criteria, that do not require algebra. In addition, they open the possibility to completely automatize the causal inference task with the help of special identification algorithms. As an encompassing framework for causal thinking, DAGs are becoming an essential tool for everyone interested in data science and machine learning.
The course provides a good overview of the theoretical advances that have been made in causal data science during the last thirty year. The focus lies on practical applications of the theory and students will be put into the position to apply causal data science methods in their own work. Hands-on examples, using the statistical software R, will guide through the presented material. There are no particular prerequisites, but a good working knowledge in basic statistics and some programming skills are a benefit.
Course Curriculum
Chapter 1: Introduction
Lecture 1: Welcome
Chapter 2: Structural Causal Models, Interventions, and Graphs
Lecture 1: Directed Acyclic Graphs
Lecture 2: Structural Causal Models
Lecture 3: D-Separation
Lecture 4: Interventions
Lecture 5: R Examples
Lecture 6: Appendix
Chapter 3: Causal Discovery
Lecture 1: Testable Implications of DAGs
Lecture 2: R Interlude
Lecture 3: Causal Discovery
Lecture 4: The PC Algorithm
Lecture 5: Practical Considerations
Chapter 4: Confounding Bias and Surrogate Experiments
Lecture 1: Confounding Bias
Lecture 2: Backdoor Adjustment
Lecture 3: Frontdoor Adjustment
Lecture 4: Do-Calculus
Lecture 5: R Examples 1
Lecture 6: Z-Identification
Lecture 7: R Examples 2
Chapter 5: Recovering from Selection Bias
Lecture 1: Selection Bias
Lecture 2: Recovering from Selelection Bias
Lecture 3: R Examples
Chapter 6: Transportability of Causal Knowledge Across Domains
Lecture 1: The Transportability Task
Lecture 2: S-Admissibility and Do-Calculus
Lecture 3: Mz-Transportability
Lecture 4: R Examples
Chapter 7: Outro
Lecture 1: The Causal Data Science Process
Instructors
-
Paul Hünermund
Professor for Business Economics
Rating Distribution
- 1 stars: 4 votes
- 2 stars: 8 votes
- 3 stars: 40 votes
- 4 stars: 168 votes
- 5 stars: 273 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!
You may also like
- Top 10 Video Editing Courses to Learn in November 2024
- Top 10 Music Production Courses to Learn in November 2024
- Top 10 Animation Courses to Learn in November 2024
- Top 10 Digital Illustration Courses to Learn in November 2024
- Top 10 Renewable Energy Courses to Learn in November 2024
- Top 10 Sustainable Living Courses to Learn in November 2024
- Top 10 Ethical AI Courses to Learn in November 2024
- Top 10 Cybersecurity Fundamentals Courses to Learn in November 2024
- Top 10 Smart Home Technology Courses to Learn in November 2024
- Top 10 Holistic Health Courses to Learn in November 2024
- Top 10 Nutrition And Diet Planning Courses to Learn in November 2024
- Top 10 Yoga Instruction Courses to Learn in November 2024
- Top 10 Stress Management Courses to Learn in November 2024
- Top 10 Mindfulness Meditation Courses to Learn in November 2024
- Top 10 Life Coaching Courses to Learn in November 2024
- Top 10 Career Development Courses to Learn in November 2024
- Top 10 Relationship Building Courses to Learn in November 2024
- Top 10 Parenting Skills Courses to Learn in November 2024
- Top 10 Home Improvement Courses to Learn in November 2024
- Top 10 Gardening Courses to Learn in November 2024