Causal Inference Causal Inference

Description de l’éditeur

A nontechnical guide to the basic ideas of modern causal inference, with illustrations from health, the economy, and public policy.

Which of two antiviral drugs does the most to save people infected with Ebola virus? Does a daily glass of wine prolong or shorten life? Does winning the lottery make you more or less likely to go bankrupt? How do you identify genes that cause disease? Do unions raise wages? Do some antibiotics have lethal side effects? Does the Earned Income Tax Credit help people enter the workforce?
 
Causal Inference provides a brief and nontechnical introduction to randomized experiments, propensity scores, natural experiments, instrumental variables, sensitivity analysis, and quasi-experimental devices. Ideas are illustrated with examples from medicine, epidemiology, economics and business, the social sciences, and public policy.

GENRE
Essais et sciences humaines
SORTIE
2023
4 avril
LANGUE
EN
Anglais
LONGUEUR
224
Pages
ÉDITIONS
MIT Press
DÉTAILS DU FOURNISSEUR
Random House, LLC
TAILLE
977,1
Ko
An Introduction to the Theory of Observational Studies An Introduction to the Theory of Observational Studies
2025
Handbook of Matching and Weighting Adjustments for Causal Inference Handbook of Matching and Weighting Adjustments for Causal Inference
2023
Design of Observational Studies Design of Observational Studies
2020
Design of Observational Studies Design of Observational Studies
2009
Artificial General Intelligence Artificial General Intelligence
2024
Data Science Data Science
2018
Robot Ethics Robot Ethics
2022
AI Assistants AI Assistants
2021
The Internet of Things, revised and updated edition The Internet of Things, revised and updated edition
2021
Smart Cities Smart Cities
2020