Skip to main content Accessibility help
×
  • Cited by 4
    • Show more authors
    • You may already have access via personal or institutional login
    • Select format
    • Publisher:
      Cambridge University Press
      Publication date:
      February 2025
      March 2025
      ISBN:
      9781009003391
      9781316518786
      9781009009966
      Dimensions:
      (229 x 152 mm)
      Weight & Pages:
      0.573kg, 286 Pages
      Dimensions:
      (229 x 152 mm)
      Weight & Pages:
      0.42kg, 286 Pages
    You may already have access via personal or institutional login
  • Selected: Digital
    Add to cart View cart Buy from Cambridge.org

    Book description

    There are many ways of conducting an analysis, but most studies show only a few carefully curated estimates. Applied research involves a complex array of analytical decisions, often leading to a 'garden of forking paths' where each choice can lead to different results. By systematically exploring how alternative analytical choices affect the findings, Multiverse Analysis reveals the full range of estimates that the data can support and uncovers insights that single-path analyses often miss. It shows which modelling decisions are most critical to the results and reveals how data and assumptions work together to produce empirical estimates. Focusing on intuitive understanding rather than complex mathematics, and drawing on real-world datasets, this book provides a step-by-step guide to comprehensive multiverse analysis. Go beyond traditional, single-path methods and discover how multiverse analysis can lead to more transparent, illuminating, and persuasive empirical contributions to science.

    Reviews

    ‘Science progresses by reducing uncertainty. We assume that most of that uncertainty is from the world - the samples and circumstances we study. But, some of that uncertainty is from us - our decisions about how to analyze and draw inferences from data. Multiverse Analysis exposes the unrecognized uncertainty from analytic decisions and provides a systematic approach to incorporating it into the process of investigation and discovery. With richly described case examples, Young and Cumberworth provide a comprehensive philosophical and practical guide to understanding and using multiverse analysis. After reading this book, you will be much more expert in what we don't know, and what to do about it.’

    Brian Nosek - Executive Director, Center for Open Science, Professor, University of Virginia

    ‘There is no deeper problem in empirical social science than establishing credible quantitative claims in light of their potential sensitivity to the various theoretical and statistical assumptions made by an analyst. In Multiverse Analysis, brilliant methodologists Cristobal Young and Erin Cumberworth develop a systematic methodology for exploring how empirical claims vary or remain robust across alternative assumptions. Every quantitative social scientist should study this important book.’

    Steven Durlauf - Frank P. Hixon Distinguished Service Professor, University of Chicago and Director, Stone Center for Research on Wealth Inequality and Mobility

    ‘Young and Cumberworth blaze the trail to a future of more logical, transparent, and objective social science in this book. Multiverse Analysis gives us the modeling distribution - the variation in estimates across alternative modeling choices. The modeling distribution quantifies the uncertainty modeling choices add to results and identifies the choices with most leverage over a conclusion. This book will change how you think about statistical models and what they tell us about the social world.’

    Mike Hout - NYU

    ‘‘The multiverse’ is less of a method than a way of thinking about choices in coding, analysis, and reporting. This new book works through a range of social-science examples to demonstrate how to use the multiverse to be open about uncertainty as a way to guide research and understanding, instead of the traditional ‘robustness study’ whose goal is to shield fragile results from criticism.’

    Andrew Gelman - Department of Statistics and Department of Computer Science, Columbia University

    Refine List

    Actions for selected content:

    Select all | Deselect all
    • View selected items
    • Export citations
    • Download PDF (zip)
    • Save to Kindle
    • Save to Dropbox
    • Save to Google Drive

    Save Search

    You can save your searches here and later view and run them again in "My saved searches".

    Please provide a title, maximum of 40 characters.
    ×

    Contents

    Metrics

    Altmetric attention score

    Full text views

    Total number of HTML views: 0
    Total number of PDF views: 0 *
    Loading metrics...

    Book summary page views

    Total views: 0 *
    Loading metrics...

    * Views captured on Cambridge Core between #date#. This data will be updated every 24 hours.

    Usage data cannot currently be displayed.

    Accessibility standard: Unknown

    Why this information is here

    This section outlines the accessibility features of this content - including support for screen readers, full keyboard navigation and high-contrast display options. This may not be relevant for you.

    Accessibility Information

    Accessibility compliance for the PDF of this book is currently unknown and may be updated in the future.