Book The Effect: An Introduction to Research Design and Causality PDF Download - Nick Huntington-Klein
Download ebook ➡ http://filesbooks.info/pl/book/752630/1607
The Effect: An Introduction to Research Design and Causality
Nick Huntington-Klein
Page: 686
Format: pdf, ePub, mobi, fb2
ISBN: 9781032580227
Publisher: CRC Press
Download or Read Online The Effect: An Introduction to Research Design and Causality Free Book (PDF ePub Mobi) by Nick Huntington-Klein
The Effect: An Introduction to Research Design and Causality Nick Huntington-Klein PDF, The Effect: An Introduction to Research Design and Causality Nick Huntington-Klein Epub, The Effect: An Introduction to Research Design and Causality Nick Huntington-Klein Read Online, The Effect: An Introduction to Research Design and Causality Nick Huntington-Klein Audiobook, The Effect: An Introduction to Research Design and Causality Nick Huntington-Klein VK, The Effect: An Introduction to Research Design and Causality Nick Huntington-Klein Kindle, The Effect: An Introduction to Research Design and Causality Nick Huntington-Klein Epub VK, The Effect: An Introduction to Research Design and Causality Nick Huntington-Klein Free Download
Overview
The Effect: An Introduction to Research Design and Causality, Second edition is an excellent teaching text about research design, specifically concerning research that uses observational data to make a causal inference. It is separated into two halves, each with different approaches to that subject. The first half goes through the concepts of causality, with very little in the way of estimation. It introduces the concept of identification thoroughly and clearly and discusses it as a process of trying to isolate variation that has a causal interpretation. Subjects include heavy emphasis on data-generating processes and causal diagrams. Concepts are demonstrated with a heavy emphasis on graphical intuition and the question of what we do to data. When we “add a control variable” what does that actually do? The target audience is practitioners as well as undergraduate and graduate students studying causal inference in various fields such as statistics, econometrics, biostatistics, the social sciences and data science. Key Features: Extensive code examples in R, Stata, and Python Chapters on heterogeneous treatment effects, simulation and power analysis, new cutting-edge methods, and uncomfortable ignored assumptions An easy-to-read conversational tone Up-to-date coverage of methods with fast-moving literatures like difference-in-differences The second edition features a new chapter on partial identification, updated materials, methods, and writing throughout, and additional materials for help navigating the book or in using the book in teaching.