
Elements of Causal Inference
Foundations and Learning Algorithms
MIT Press
Will be published approx. on 29. November 2017
Book
Hardback
288 pages
978-0-262-03731-0 (ISBN)
Description
A concise and self-contained introduction to causal inference, increasingly important in data science and machine learning.The mathematization of causality is a relatively recent development, and has become increasingly important in data science and machine learning. This book offers a self-contained and concise introduction to causal models and how to learn them from data.
After explaining the need for causal models and discussing some of the principles underlying causal inference, the book teaches readers how to use causal models: how to compute intervention distributions, how to infer causal models from observational and interventional data, and how causal ideas could be exploited for classical machine learning problems. All of these topics are discussed first in terms of two variables and then in the more general multivariate case. The bivariate case turns out to be a particularly hard problem for causal learning because there are no conditional independences as used by classical methods for solving multivariate cases. The authors consider analyzing statistical asymmetries between cause and effect to be highly instructive, and they report on their decade of intensive research into this problem. The book is accessible to readers with a background in machine learning or statistics, and can be used in graduate courses or as a reference for researchers. The text includes code snippets that can be copied and pasted, exercises, and an appendix with a summary of the most important technical concepts.
After explaining the need for causal models and discussing some of the principles underlying causal inference, the book teaches readers how to use causal models: how to compute intervention distributions, how to infer causal models from observational and interventional data, and how causal ideas could be exploited for classical machine learning problems. All of these topics are discussed first in terms of two variables and then in the more general multivariate case. The bivariate case turns out to be a particularly hard problem for causal learning because there are no conditional independences as used by classical methods for solving multivariate cases. The authors consider analyzing statistical asymmetries between cause and effect to be highly instructive, and they report on their decade of intensive research into this problem. The book is accessible to readers with a background in machine learning or statistics, and can be used in graduate courses or as a reference for researchers. The text includes code snippets that can be copied and pasted, exercises, and an appendix with a summary of the most important technical concepts.
More details
Series
Language
English
Place of publication
Cambridge
United States
Publishing group
MIT Press Ltd
Target group
College/higher education
Interest Age: From 18 years
Product notice
Cloth over boards
Illustrations
36 s/w Abbildungen, 15 farbige Abbildungen
15 color illus., 36 b&w illus.
Dimensions
Height: 229 mm
Width: 178 mm
Thickness: 22 mm
ISBN-13
978-0-262-03731-0 (9780262037310)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Other editions
Additional editions

Jonas Peters | Dominik Janzing | Bernhard Scholkopf
Elements of Causal Inference
Foundations and Learning Algorithms
E-Book
12/2017
MIT Press
€43.99
Available for download
Persons
Author
Associate Professor of StatisticsUniversity of Copenhagen
Senior Research ScientistMax Planck Institute for Intelligent Systems
Director of the Max Planck Institute for Intelligent in Tuebingen, Germany, Professor for Machine LeaMax Planck Institute for Intelligent Systems