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Causality from the Point of View of Statistics
Imprint: Wipf and Stock
212 Pages, 6.00 x 9.00 x 0.42 in
- Paperback
- 9781666777086
- Published: August 2023
$29.00 / £24.00 / AU$46.00
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Most are familiar with the adage "correlation does not imply causation." Since much of science is concerned with problems of causality and statistics is so widely used in research, one may wonder whether statistics possesses the tools to study such problems and contribute to their resolution. These were the questions posed over thirty years ago by Pearl, Robins, Rubin, Shafer, etc. when they set out to incorporate notions of causality into statistics theory and develop methods for estimating causal relationships. Since then, the schools of "statistical causality" they founded have produced interesting results and methods that help us think about causality and are potentially useful in real-life problems. Yet, despite its appeal, statistical causality is still disregarded by many "mainstream" statisticians, and its methods are not widely known. In part this is explained by the unorthodox and apparently disparate character of the various schools, in particular by the distinct languages they developed and that are not readily accessible. Thus, even some advanced researchers seemed startled by things like Rubin's "counterfactuals" that in one guise or another appear in all theories but that seem potentially incompatible with Kolmogorov's formalism, the very foundation of statistics. It turns out that statistical causality is firmly rooted in Kolmogorov's axiomatization of probability as the elements required by it are essentially those proposed a century ago by Steinhaus, and, perhaps surprisingly, that statistics has always engaged with causality. The present book makes this plain, providing a basis for statistical causality that subsumes and reconciles the theories of all other schools and that to a mainstream statistician will appear entirely familiar and natural.
José A. Ferreira received his undergraduate degree from the Faculty of Sciences of Lisbon, Portugal, and his graduate degree from the University of Sheffield, UK. He has twenty-five years’ experience as an applied statistician and currently works at the RIVM, National Institute for Public Health and the Environment, the Netherlands.
“Causal modeling, which is central to understanding how the world works, has become a hot topic in statistics. Several schools exist, approaching it from different perspectives, and much confusion exists about their relative merits. José Ferreira is to be congratulated on producing a very timely book, pulling together the various views into an integrated overview.”
—David Hand, professor emeritus of mathematics, Imperial College