Udemy

Causal Data Science with Directed Acyclic Graphs

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  • 3,405 Students
  • Updated 9/2020
4.6
(560 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
4 Hour(s) 57 Minute(s)
Language
English
Taught by
Paul Hünermund
Rating
4.6
(560 Ratings)
2 views

Course Overview

Causal Data Science with Directed Acyclic Graphs

Get to know the modern tools for causal inference from machine learning and AI, with many practical examples in R

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 Content

  • 7 section(s)
  • 27 lecture(s)
  • Section 1 Introduction
  • Section 2 Structural Causal Models, Interventions, and Graphs
  • Section 3 Causal Discovery
  • Section 4 Confounding Bias and Surrogate Experiments
  • Section 5 Recovering from Selection Bias
  • Section 6 Transportability of Causal Knowledge Across Domains
  • Section 7 Outro

What You’ll Learn

  • Causal inference in data science and machine learning
  • How to work with directed acylic graphs (DAG)
  • Newest developments in causal AI


Reviews

  • A
    Abhishek Pandit
    5.0

    The level of the discussion is both challenging and accessible. The examples in R and connections with the real world make the theoretical material easier to fathom. This is great for the intersection of economics and computer science, which is already an area I find fascinating. Well done!

  • N
    Norma Leyva
    5.0

    Good introduction to the topic.

  • S
    Scott Salter
    5.0

    Good to see a practical example of the problem statement from the off.

  • N
    N Vivek
    5.0

    lovely example. Looking forward to many more like this

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